1 00:00:05,280 --> 00:00:09,479 Speaker 1: Allow a seven, five or three. The pulse of medical 2 00:00:09,480 --> 00:00:13,360 Speaker 1: technology has quickened in recent years, bringing forth a transformative 3 00:00:13,400 --> 00:00:16,479 Speaker 1: new age in healthcare with no signs of slowing down. 4 00:00:17,520 --> 00:00:21,160 Speaker 1: Forty percent of healthcare industries globally are already regularly using 5 00:00:21,239 --> 00:00:24,840 Speaker 1: AI and machine language right now. An AI's stake in 6 00:00:24,880 --> 00:00:28,159 Speaker 1: the healthcare market is expected to grow ninefold in the 7 00:00:28,200 --> 00:00:31,480 Speaker 1: next six years, making it worth nearly one hundred and 8 00:00:31,640 --> 00:00:35,720 Speaker 1: ninety billion dollars by twenty thirty. As doctors rely on 9 00:00:35,760 --> 00:00:39,560 Speaker 1: technology to improve the medical experience for each and every 10 00:00:39,560 --> 00:00:43,720 Speaker 1: one of their patients. Hi, how are you feeling today? 11 00:00:46,400 --> 00:00:48,840 Speaker 1: After coming out of the grips of a global pandemic 12 00:00:49,040 --> 00:00:52,320 Speaker 1: involving a virus the world had not seen before. Healthcare 13 00:00:52,360 --> 00:00:54,840 Speaker 1: needs to be at the forefront of research and technology 14 00:00:55,080 --> 00:00:59,360 Speaker 1: now more than ever. AI's role becomes not just innovative, 15 00:00:59,480 --> 00:01:03,840 Speaker 1: but a cent while creating a lifeline for overburdened healthcare systems. 16 00:01:05,160 --> 00:01:07,880 Speaker 1: Join us as we explore the intersection of technology and 17 00:01:07,920 --> 00:01:11,000 Speaker 1: medicine and how the two are revolutionizing the way we 18 00:01:11,040 --> 00:01:18,320 Speaker 1: experience healthcare today and in the future. Welcome to Technically Speaking, 19 00:01:18,520 --> 00:01:21,480 Speaker 1: an Intel podcast, the show that brings you the stories 20 00:01:21,520 --> 00:01:26,600 Speaker 1: and insights of AI presented by iHeartMedia's Ruby Studio and Intel. 21 00:01:27,840 --> 00:01:31,559 Speaker 1: Hey there, I'm Graham class. In this episode, we're diving 22 00:01:31,560 --> 00:01:34,319 Speaker 1: into the world of healthcare and medicine where AI and 23 00:01:34,360 --> 00:01:37,959 Speaker 1: technology are not just changing the game, they're saving lives. 24 00:01:38,680 --> 00:01:41,200 Speaker 1: We'll be joined by two experts who at the vanguard 25 00:01:41,240 --> 00:01:47,600 Speaker 1: of this revolution that's introduced today's guests. Alex Flores is 26 00:01:47,600 --> 00:01:51,240 Speaker 1: the General Manager of Health and Life Sciences Vertical at Intel. 27 00:01:51,560 --> 00:01:55,160 Speaker 1: He will share insights into how AI is reshaping patient care. 28 00:01:55,760 --> 00:01:58,600 Speaker 1: Also joining us is Peter sched, the Head of Digital 29 00:01:58,640 --> 00:02:02,200 Speaker 1: Health for North America for Siemens Health and Ears, which 30 00:02:02,240 --> 00:02:06,760 Speaker 1: focuses on the implementation of advanced technologies like therapeutic imaging 31 00:02:06,840 --> 00:02:10,919 Speaker 1: and laboratory diagnostics to enhance patient care. Semens Health and 32 00:02:10,960 --> 00:02:14,000 Speaker 1: Years work with healthcare providers to ensure that innovative new 33 00:02:14,040 --> 00:02:17,920 Speaker 1: technology is working efficiently and that staff understand how to 34 00:02:17,960 --> 00:02:21,800 Speaker 1: best use technology so patients can get accurate answers about 35 00:02:21,840 --> 00:02:26,079 Speaker 1: their health fast than ever before. Both guests will help 36 00:02:26,160 --> 00:02:28,760 Speaker 1: us understand the direction of healthcare as a whole and 37 00:02:28,800 --> 00:02:32,920 Speaker 1: the AI powered diagnostics and innovations currently changing the face 38 00:02:32,960 --> 00:02:38,959 Speaker 1: of medicine. Thank you both for joining me today. 39 00:02:39,480 --> 00:02:41,800 Speaker 2: Graham and Peter, thank you for having me today. Really 40 00:02:41,800 --> 00:02:45,200 Speaker 2: excited about this conversation. Excited to be here today, Graham, 41 00:02:45,280 --> 00:02:46,680 Speaker 2: great to talk to you and Alex. 42 00:02:47,480 --> 00:02:51,640 Speaker 1: Recently, I read an interesting survey conducted in August last 43 00:02:51,680 --> 00:02:55,240 Speaker 1: here of onenty twenty seven people, which found that sixty 44 00:02:55,240 --> 00:02:58,840 Speaker 1: four percent of people would prefern Ai system over a 45 00:02:58,880 --> 00:03:02,560 Speaker 1: human doctor. For gen Z, that number rises to eighty 46 00:03:02,600 --> 00:03:06,080 Speaker 1: two percent that would prefer Ai over humans. I'd like 47 00:03:06,120 --> 00:03:10,320 Speaker 1: to get your general thoughts about that. I'll start with Alex. 48 00:03:10,960 --> 00:03:13,680 Speaker 2: Yeah, it's a really interesting topic. I've heard a lot 49 00:03:13,720 --> 00:03:17,080 Speaker 2: about this too. I think what fascinates me most is 50 00:03:17,280 --> 00:03:19,119 Speaker 2: in a lot of surveys, a lot of data that's 51 00:03:19,160 --> 00:03:24,720 Speaker 2: out there, patients are often more honest with virtual assistance 52 00:03:24,840 --> 00:03:28,680 Speaker 2: with chatbots, so I find that very fascinating. What's also 53 00:03:28,760 --> 00:03:33,840 Speaker 2: interesting is oftentimes a chatbot, for example, can also show 54 00:03:33,880 --> 00:03:38,280 Speaker 2: more empathy. You know, chatbots don't get tired of, for example, 55 00:03:38,320 --> 00:03:42,000 Speaker 2: answering the same question over and over again. But the 56 00:03:42,160 --> 00:03:44,440 Speaker 2: other thing that's really interesting, kind of the flip side 57 00:03:44,480 --> 00:03:49,119 Speaker 2: of this is accountability. So, for example, people are more 58 00:03:49,120 --> 00:03:53,440 Speaker 2: accountable to other people, to other humans, specifically doctors, So 59 00:03:53,520 --> 00:03:56,320 Speaker 2: I find that another really interesting area in terms of 60 00:03:56,960 --> 00:04:00,840 Speaker 2: you know, maybe people do prefer chatbots or control assistance 61 00:04:00,920 --> 00:04:04,120 Speaker 2: for some areas, but there's always that need for human 62 00:04:04,160 --> 00:04:05,480 Speaker 2: touch beta. 63 00:04:06,160 --> 00:04:09,480 Speaker 3: Yeah. Maybe just to add to what Alex was saying, Graham, 64 00:04:09,520 --> 00:04:13,000 Speaker 3: I think a lot of us don't maybe even realize 65 00:04:13,040 --> 00:04:17,280 Speaker 3: that AI is already playing a role today within their healthcare. 66 00:04:17,600 --> 00:04:21,400 Speaker 3: So patients who are going to go get a diagnostic test, 67 00:04:21,440 --> 00:04:25,120 Speaker 3: for example, to get a MRI of their knee, or 68 00:04:25,160 --> 00:04:27,560 Speaker 3: maybe they've got something bothering them in their chests so 69 00:04:27,600 --> 00:04:30,760 Speaker 3: they get a chest CT scan or whatnot. When that 70 00:04:30,800 --> 00:04:33,560 Speaker 3: patient lays down on the table to get that diagnostic 71 00:04:33,600 --> 00:04:37,040 Speaker 3: scan on that MRI, the MRI actually in some cases 72 00:04:37,120 --> 00:04:40,360 Speaker 3: is already looking at the patient's anatomy and is able 73 00:04:40,360 --> 00:04:43,080 Speaker 3: to identify and recognize, oh, this is the patient's knee. 74 00:04:43,120 --> 00:04:46,080 Speaker 3: So I'm going to position the patient within that diagnostic 75 00:04:46,120 --> 00:04:49,240 Speaker 3: scan to the most optimal position so that they can 76 00:04:49,279 --> 00:04:52,160 Speaker 3: actually get a good visualization of that knee. So all 77 00:04:52,240 --> 00:04:54,839 Speaker 3: that is actually being done not just by a human 78 00:04:54,880 --> 00:04:57,839 Speaker 3: but also by artificial intelligence. It's actually built into that 79 00:04:58,000 --> 00:05:01,560 Speaker 3: MRI scanner that's already helping create that optimal position for 80 00:05:01,600 --> 00:05:05,320 Speaker 3: that patient. So AI is already being utilized in many 81 00:05:05,400 --> 00:05:08,479 Speaker 3: aspects of healthcare, and again, patients may not actually even 82 00:05:08,520 --> 00:05:11,000 Speaker 3: realize that they're getting some of the benefits from AI. 83 00:05:11,839 --> 00:05:16,039 Speaker 1: So in a sense, it's more of an augmentation to 84 00:05:16,080 --> 00:05:20,520 Speaker 1: help doctors and medical practitioners to make better diagnosis. Yeah. 85 00:05:20,600 --> 00:05:23,640 Speaker 3: Absolutely, I think as Alex pointed out, certainly we seemen's 86 00:05:23,640 --> 00:05:28,120 Speaker 3: health in years here, we also value the relationship and 87 00:05:28,320 --> 00:05:31,760 Speaker 3: acknowledge the relationship that the patient has with their physician, 88 00:05:31,960 --> 00:05:34,280 Speaker 3: and we want to make sure that that relationship isn't 89 00:05:34,279 --> 00:05:37,360 Speaker 3: disturbed by artificial intelligence. But as you said, Graham, really 90 00:05:37,400 --> 00:05:40,839 Speaker 3: augmented by AI, so that physician, that doctor, he or 91 00:05:40,880 --> 00:05:44,600 Speaker 3: she can make a more informed diagnostic decision or maybe 92 00:05:44,600 --> 00:05:48,600 Speaker 3: a more personalized therapeutic decision for that patient, backed up 93 00:05:48,600 --> 00:05:50,280 Speaker 3: by what the AI is helping with. 94 00:05:50,960 --> 00:05:53,240 Speaker 2: If you don't mind, just to add what Peter was saying, 95 00:05:53,640 --> 00:05:55,960 Speaker 2: I really like to use the analogy of a pilot 96 00:05:55,960 --> 00:06:00,520 Speaker 2: and copilot. So airlines have been using artificial intelligence for many, 97 00:06:00,560 --> 00:06:04,320 Speaker 2: many decades now, but the need for a pilot and 98 00:06:04,400 --> 00:06:08,120 Speaker 2: a co pilot has never gone away. Even when the 99 00:06:08,240 --> 00:06:11,720 Speaker 2: plane is an autopilot, there's still a need for a 100 00:06:11,760 --> 00:06:13,800 Speaker 2: pilot and a co pilot. So the way I see 101 00:06:14,120 --> 00:06:17,960 Speaker 2: artificial intelligence is really more that co pilot for that 102 00:06:18,040 --> 00:06:21,000 Speaker 2: physician who happens to be the pilot. And at the 103 00:06:21,080 --> 00:06:23,240 Speaker 2: end of the day, it's really about the patient. What 104 00:06:23,440 --> 00:06:28,760 Speaker 2: can artificial intelligence do to help enable better patient outcomes 105 00:06:28,839 --> 00:06:30,359 Speaker 2: and so forth for the patient. 106 00:06:31,120 --> 00:06:33,640 Speaker 1: Yeah, that copilot concept. I mean I use that for 107 00:06:34,640 --> 00:06:38,000 Speaker 1: my coding and it's helped me tremendously. But I'd like 108 00:06:38,040 --> 00:06:41,640 Speaker 1: to sort of turn towards maybe your personal stories about 109 00:06:41,720 --> 00:06:45,520 Speaker 1: what makes you so passionate about this intersection between technology 110 00:06:45,520 --> 00:06:48,360 Speaker 1: and healthcare. I'll start with Peter. Do you have a 111 00:06:48,400 --> 00:06:49,479 Speaker 1: story that you could share? 112 00:06:50,120 --> 00:06:52,080 Speaker 3: Oh, I don't know if it's a story or not, 113 00:06:52,279 --> 00:06:54,479 Speaker 3: but this is an area that I've grown into and loved. 114 00:06:54,520 --> 00:06:56,479 Speaker 3: I mean, it's an area that I've been part of 115 00:06:56,560 --> 00:06:59,800 Speaker 3: for over twenty five years. Outside of healthcare and our 116 00:06:59,800 --> 00:07:02,440 Speaker 3: p lives, we embrace technology. We're always looking at the 117 00:07:02,480 --> 00:07:05,440 Speaker 3: latest and greatest and technology standpoint. How do you take 118 00:07:05,480 --> 00:07:08,200 Speaker 3: that same comfort level, that passion and bring that now 119 00:07:08,240 --> 00:07:12,240 Speaker 3: into a space like healthcare, Because at least from my perspective, 120 00:07:12,360 --> 00:07:15,560 Speaker 3: I see the opportunity for so much benefits for the 121 00:07:15,600 --> 00:07:18,760 Speaker 3: patient here, so certainly not just for the clinician in 122 00:07:18,840 --> 00:07:21,840 Speaker 3: terms of efficiencies and time savings and everything, but really 123 00:07:22,080 --> 00:07:24,960 Speaker 3: remarkable benefits for the patient in terms of being able 124 00:07:25,040 --> 00:07:29,920 Speaker 3: to diagnose ailments earlier, find more personalized treatments for those patients, 125 00:07:30,160 --> 00:07:34,680 Speaker 3: potentially saving patients' lives or detecting diseases earlier and treating 126 00:07:34,680 --> 00:07:38,840 Speaker 3: those diseases earlier because of technology. To me, that's super exciting, 127 00:07:39,240 --> 00:07:41,560 Speaker 3: super interesting in why I love being in this space. 128 00:07:42,280 --> 00:07:46,560 Speaker 2: Alex, Yes, very similar to Peter. I'm not a clinician. 129 00:07:46,760 --> 00:07:49,920 Speaker 2: I'm an engineer by training, and you know, I have 130 00:07:50,120 --> 00:07:55,080 Speaker 2: the honor to manage some of the brightest engineers today 131 00:07:55,240 --> 00:07:57,920 Speaker 2: on my team. And really the way we show up 132 00:07:58,040 --> 00:08:01,760 Speaker 2: is we look at this from an engineering perspective and 133 00:08:01,800 --> 00:08:06,160 Speaker 2: a technology perspective. So being able to sit down with clinicians, 134 00:08:06,240 --> 00:08:10,680 Speaker 2: with nurses, with practitioners and so forth, and really understand 135 00:08:10,760 --> 00:08:14,320 Speaker 2: what are their problems, what are their challenges, and then 136 00:08:14,400 --> 00:08:16,600 Speaker 2: being able to step back and look at it from 137 00:08:16,640 --> 00:08:20,320 Speaker 2: a technology lens and seeing how we can apply that technology. 138 00:08:20,880 --> 00:08:23,520 Speaker 2: For me, that's what's most exciting is being able to 139 00:08:23,560 --> 00:08:27,160 Speaker 2: work across the ecosystem, being able to work with different 140 00:08:27,200 --> 00:08:30,320 Speaker 2: partners and really look at it in terms of how 141 00:08:30,360 --> 00:08:36,239 Speaker 2: can technology be seamless and help clinicians ultimately deliver better care. 142 00:08:37,559 --> 00:08:40,320 Speaker 1: For our regular listeners of technically speaking, you know that 143 00:08:40,400 --> 00:08:43,400 Speaker 1: in season one we covered some of the challenges surrounding 144 00:08:43,440 --> 00:08:47,080 Speaker 1: adoption of this innovative technology in a variety of professions. 145 00:08:47,840 --> 00:08:50,920 Speaker 1: There has always been some tension when advancements in technology 146 00:08:51,040 --> 00:08:56,160 Speaker 1: drive major changes in an industry, be it transportation, manufacturing, retail, 147 00:08:56,440 --> 00:08:59,760 Speaker 1: or security, and that's certainly true in the field of healthcare. 148 00:09:00,200 --> 00:09:04,320 Speaker 1: With game changing technology like AI runs into regulations and 149 00:09:04,400 --> 00:09:08,800 Speaker 1: red tape that might slow its adoption. Well, perhaps patients 150 00:09:08,800 --> 00:09:16,200 Speaker 1: are simply unfamiliar with how this new technology can help them. 151 00:09:16,360 --> 00:09:19,199 Speaker 3: You know, I think we all acknowledge the great possibilities 152 00:09:19,240 --> 00:09:22,800 Speaker 3: of a technology like artificial intelligence, for example, but really, 153 00:09:22,840 --> 00:09:26,200 Speaker 3: how do you drive adoption of this technology within the 154 00:09:26,240 --> 00:09:29,480 Speaker 3: healthcare space, And certainly there's different ways to do it. 155 00:09:29,600 --> 00:09:32,400 Speaker 3: We talk about this trust that the patient has with 156 00:09:32,480 --> 00:09:36,320 Speaker 3: the clinician and this valued relationship there. We've got to 157 00:09:36,400 --> 00:09:39,960 Speaker 3: also help the clinician build trust with the technology and 158 00:09:40,200 --> 00:09:43,559 Speaker 3: trust with artificial intelligence. What we do see though, is 159 00:09:43,600 --> 00:09:46,760 Speaker 3: also making sure that as you develop these AI algorithms 160 00:09:47,080 --> 00:09:51,280 Speaker 3: that they're really developed based on the patient population that 161 00:09:51,280 --> 00:09:53,760 Speaker 3: they're going to be applied towards. We live in a 162 00:09:53,800 --> 00:09:56,040 Speaker 3: diverse world here, and we need to make sure again 163 00:09:56,080 --> 00:10:00,520 Speaker 3: those AI algorithms are appropriately fine. Took think the second 164 00:10:00,559 --> 00:10:03,360 Speaker 3: thing is to really help again the clinician get comfortable 165 00:10:03,360 --> 00:10:06,600 Speaker 3: with this technology. We've got to be able to educate 166 00:10:06,600 --> 00:10:10,440 Speaker 3: the clinician on why the AI algorithm has made the 167 00:10:10,440 --> 00:10:13,880 Speaker 3: clinical conclusions that it has made. Remove this veil of 168 00:10:13,880 --> 00:10:17,320 Speaker 3: a black box that the AI algorithm is helping that 169 00:10:17,360 --> 00:10:21,319 Speaker 3: clinician understand why is the computer coming to this particular conclusion. 170 00:10:21,760 --> 00:10:24,400 Speaker 3: Having that type of education I think is really important 171 00:10:24,440 --> 00:10:27,400 Speaker 3: in terms of driving that overall adoption of a technology 172 00:10:27,440 --> 00:10:27,880 Speaker 3: like AI. 173 00:10:28,840 --> 00:10:31,679 Speaker 1: And Alex you know, I'm pleased to hear that you're 174 00:10:31,679 --> 00:10:34,760 Speaker 1: an engineer as well. We deal with challenges and problems 175 00:10:34,800 --> 00:10:37,240 Speaker 1: all the time. What are some of the key challenges 176 00:10:37,480 --> 00:10:41,359 Speaker 1: that you face getting this technology into healthcare systems? 177 00:10:41,840 --> 00:10:43,760 Speaker 2: Yeah, I think there's two areas that I would want 178 00:10:43,840 --> 00:10:48,640 Speaker 2: to add. One is around transparency. There needs to be 179 00:10:48,679 --> 00:10:51,600 Speaker 2: a bigger focus in terms of transparency in terms of 180 00:10:52,320 --> 00:10:57,320 Speaker 2: educating doctors, nurses, and so forth on when AI is 181 00:10:57,360 --> 00:11:00,680 Speaker 2: actually being used so they understand it, they know that 182 00:11:00,800 --> 00:11:05,120 Speaker 2: it's there and hopefully it is actually helping them solve 183 00:11:05,120 --> 00:11:09,560 Speaker 2: their problems. So that transparency and understanding when it's being applied, 184 00:11:10,040 --> 00:11:12,600 Speaker 2: why it's being applied, and how it should be applied, 185 00:11:12,640 --> 00:11:15,720 Speaker 2: I think is very important. I think the second thing 186 00:11:16,080 --> 00:11:19,160 Speaker 2: that the industry hasn't been talking enough about, and that's 187 00:11:19,280 --> 00:11:23,720 Speaker 2: around validation, and specifically what I mean by validation is 188 00:11:23,840 --> 00:11:28,880 Speaker 2: once those algorithms are out there, going back and really understanding, Okay, 189 00:11:28,920 --> 00:11:32,040 Speaker 2: are they doing what they were supposed to do? And 190 00:11:32,120 --> 00:11:35,440 Speaker 2: if they are, what is their effectiveness? But if they're 191 00:11:35,480 --> 00:11:38,400 Speaker 2: not doing what they're supposed to be doing, then what 192 00:11:38,559 --> 00:11:41,480 Speaker 2: can be done to actually augment them to make them 193 00:11:41,480 --> 00:11:43,960 Speaker 2: better and so forth? And a lot of times that 194 00:11:44,080 --> 00:11:47,680 Speaker 2: has to go back to the target population that's using 195 00:11:47,679 --> 00:11:50,080 Speaker 2: them and really understand how we can make that better 196 00:11:50,120 --> 00:11:53,960 Speaker 2: and ultimately get solutions out there that are impacting the 197 00:11:54,040 --> 00:11:55,400 Speaker 2: right way in. 198 00:11:55,440 --> 00:11:58,880 Speaker 1: Terms of the intellence, seemens healthy as partnership and the 199 00:11:58,920 --> 00:12:01,840 Speaker 1: way you work. Do you have any specific projects or 200 00:12:01,840 --> 00:12:06,160 Speaker 1: examples that you could share where some of these either 201 00:12:06,240 --> 00:12:10,400 Speaker 1: AI or technology driven solutions that actually made a difference 202 00:12:10,480 --> 00:12:11,640 Speaker 1: in a healthcare outcome. 203 00:12:12,280 --> 00:12:16,359 Speaker 3: Yeah, it's so great to partner with a similar innovative 204 00:12:16,480 --> 00:12:20,000 Speaker 3: company like Intel here to deliver our solutions to the 205 00:12:20,040 --> 00:12:23,040 Speaker 3: healthcare professional seem as Healthy Ears has one of the 206 00:12:23,160 --> 00:12:27,720 Speaker 3: unique distinctions of being the only medical technology company capable 207 00:12:27,760 --> 00:12:31,320 Speaker 3: of end to end cancer care, so from diagnosis to screening, 208 00:12:31,360 --> 00:12:34,680 Speaker 3: to treatment to survivorship. This is something that we cover 209 00:12:35,120 --> 00:12:37,720 Speaker 3: to take care of the patient. And one aspect of 210 00:12:37,760 --> 00:12:41,560 Speaker 3: that is during the treatment of cancer patients, especially during 211 00:12:41,640 --> 00:12:46,240 Speaker 3: radiation therapy, they might have had a cancer identified in 212 00:12:46,280 --> 00:12:48,560 Speaker 3: some portion of their anatomy and now we've got to 213 00:12:48,720 --> 00:12:52,280 Speaker 3: apply radiation to kill that cancer. There's a tedious task 214 00:12:52,360 --> 00:12:54,319 Speaker 3: that has to be done to make sure that we 215 00:12:54,400 --> 00:12:58,800 Speaker 3: target that radiation towards the cancer but not the healthy 216 00:12:58,880 --> 00:13:02,960 Speaker 3: tissue around the cancer. So what's typically done a clinician 217 00:13:03,040 --> 00:13:07,000 Speaker 3: will sit down and they'll actually manually draw out where 218 00:13:07,040 --> 00:13:11,360 Speaker 3: the cancer is and the anatomical structures around that cancer, 219 00:13:11,800 --> 00:13:15,840 Speaker 3: so that they can feed that plan to radiation therapy 220 00:13:15,920 --> 00:13:18,520 Speaker 3: machine so that the machine knows where to target the 221 00:13:18,600 --> 00:13:23,160 Speaker 3: radiation on that patient. So for clinicians, that actually takes 222 00:13:23,200 --> 00:13:27,040 Speaker 3: sometimes hours on end and actually in some cases delays 223 00:13:27,120 --> 00:13:30,120 Speaker 3: the treatment for patients because of this kind of very 224 00:13:30,280 --> 00:13:32,880 Speaker 3: tedious step we had seen in Healthy aers. We actually 225 00:13:32,880 --> 00:13:36,000 Speaker 3: created an AI algorithm that helps kind of automate some 226 00:13:36,120 --> 00:13:40,080 Speaker 3: of that tracing. But because of the complexities of three 227 00:13:40,160 --> 00:13:44,440 Speaker 3: D objects and human anatomical structures, no two tracing is 228 00:13:44,440 --> 00:13:47,959 Speaker 3: alike here, so we actually have to have really high 229 00:13:47,960 --> 00:13:51,600 Speaker 3: powered computing that's really accessible to the clinician to be 230 00:13:51,679 --> 00:13:57,120 Speaker 3: able to accurately trace out these malignant cancer abnormalities and 231 00:13:57,120 --> 00:13:59,920 Speaker 3: then making sure that healthy tissue is protected here. So 232 00:14:00,559 --> 00:14:02,760 Speaker 3: with the help of Intel, we've actually been able to 233 00:14:03,080 --> 00:14:08,040 Speaker 3: accelerate tracings of tumors where instead of taking hours, it 234 00:14:08,120 --> 00:14:11,480 Speaker 3: takes literally minutes now, So what that translates to is 235 00:14:11,480 --> 00:14:14,400 Speaker 3: for patients, they can actually schedule their treatments quicker in 236 00:14:14,480 --> 00:14:17,360 Speaker 3: advance and in rapid succession to be able to get 237 00:14:17,400 --> 00:14:20,760 Speaker 3: rid of that cancer. So we're actually seeing direct patient 238 00:14:20,880 --> 00:14:24,040 Speaker 3: benefit because of this relationship that we have with our 239 00:14:24,040 --> 00:14:25,440 Speaker 3: technology partner at Intel. 240 00:14:26,080 --> 00:14:29,000 Speaker 1: Yeah, I was actually gonna ask a question about the 241 00:14:29,120 --> 00:14:31,680 Speaker 1: radiation side of things, So it's great that you are 242 00:14:31,680 --> 00:14:34,640 Speaker 1: able to expand on that. In terms of the actual 243 00:14:34,680 --> 00:14:38,320 Speaker 1: cost of these sorts of systems being implemented or slotted 244 00:14:38,360 --> 00:14:41,680 Speaker 1: into the existing workflow, what are your thoughts on the 245 00:14:41,720 --> 00:14:45,920 Speaker 1: cost models or the ability for hospitals and maybe even 246 00:14:46,080 --> 00:14:50,800 Speaker 1: smaller practitioners to get this sort of technology into their practice. 247 00:14:51,520 --> 00:14:54,320 Speaker 3: Yeah, you know, certainly cost comes into play here, and 248 00:14:54,760 --> 00:14:57,080 Speaker 3: one of the challenges that we're seeing with the overall 249 00:14:57,160 --> 00:14:59,760 Speaker 3: adoption here is that, you know, it becomes a challenge 250 00:14:59,760 --> 00:15:02,560 Speaker 3: for are some providers to be able to make an 251 00:15:02,600 --> 00:15:06,200 Speaker 3: investment in these type of technologies because of the uncertainty 252 00:15:06,480 --> 00:15:09,120 Speaker 3: around not just the cost, but making sure that they 253 00:15:09,160 --> 00:15:13,600 Speaker 3: get reimbursed for those costs. Unfortunately, with the way the 254 00:15:13,720 --> 00:15:18,000 Speaker 3: landscape stands today and how AI is continuously evolving, our 255 00:15:18,040 --> 00:15:21,400 Speaker 3: current setups for payment for these types of services haven't 256 00:15:21,440 --> 00:15:25,360 Speaker 3: evolved this quickly. So you have today over seven hundred 257 00:15:25,400 --> 00:15:28,680 Speaker 3: different AI algorithms that have been approved by the FDA 258 00:15:28,760 --> 00:15:32,920 Speaker 3: here in the United States, but merely a handful and 259 00:15:32,920 --> 00:15:35,080 Speaker 3: when I say handful, like literally you can count them 260 00:15:35,080 --> 00:15:38,280 Speaker 3: on the fingers of your hands are actually reimbursed for 261 00:15:38,360 --> 00:15:41,520 Speaker 3: that technology, and some of them are not even reimbursed 262 00:15:41,560 --> 00:15:43,960 Speaker 3: at the same level that it costs for those technologies. 263 00:15:44,160 --> 00:15:47,840 Speaker 3: So if you're a larger organization that maybe has some 264 00:15:48,000 --> 00:15:51,200 Speaker 3: financial flexibility, maybe you can take that risk and make 265 00:15:51,200 --> 00:15:54,440 Speaker 3: that investment. But certainly if you go to let's say 266 00:15:54,600 --> 00:15:59,520 Speaker 3: rural communities or the underserved populations where that financial flexibility 267 00:15:59,560 --> 00:16:02,480 Speaker 3: isn't there, it becomes a very difficult decision for the 268 00:16:02,520 --> 00:16:05,200 Speaker 3: provider is to make that investment. And I think that's 269 00:16:05,200 --> 00:16:07,560 Speaker 3: where we're seeing some of the shortfalls with adopting this 270 00:16:07,680 --> 00:16:10,400 Speaker 3: technology and why we at Semen's Health in years we've 271 00:16:10,400 --> 00:16:14,200 Speaker 3: been advocating to folks in Washington that we need to 272 00:16:14,240 --> 00:16:19,000 Speaker 3: have a consistent and predictable reimbursement associated with artificial intelligence, 273 00:16:19,080 --> 00:16:21,520 Speaker 3: not just to make sure that hey, everybody gets paid 274 00:16:21,600 --> 00:16:24,480 Speaker 3: on it, but more importantly for us to be able 275 00:16:24,600 --> 00:16:28,280 Speaker 3: to see what is the downstream benefit of this technology 276 00:16:28,400 --> 00:16:31,080 Speaker 3: to the healthcare system and to the patients. 277 00:16:31,760 --> 00:16:33,480 Speaker 2: One of the things that we like to help you 278 00:16:33,720 --> 00:16:37,400 Speaker 2: scale this adoption of artificial intelligence and this new technology 279 00:16:37,800 --> 00:16:40,640 Speaker 2: is really showing how hospital systems can deploy on their 280 00:16:40,720 --> 00:16:44,000 Speaker 2: existing infrastructure. We want them to know that they don't 281 00:16:44,000 --> 00:16:48,000 Speaker 2: need to rip and replace their existing infrastructure. What they 282 00:16:48,040 --> 00:16:50,760 Speaker 2: can do is with partners like Semen's Health in EARS, 283 00:16:50,760 --> 00:16:53,200 Speaker 2: we can show them how to deploy on their existing 284 00:16:53,240 --> 00:16:56,600 Speaker 2: assets and then from there they can really derive the 285 00:16:56,640 --> 00:17:01,040 Speaker 2: benefits of that technology. From there, they can determine Okay, 286 00:17:01,120 --> 00:17:03,720 Speaker 2: how do I scale this? And again we can work 287 00:17:03,760 --> 00:17:06,760 Speaker 2: with them very closely to determine. Okay, in the future, 288 00:17:06,800 --> 00:17:10,240 Speaker 2: what are your needs from a compute standpoint that's going 289 00:17:10,280 --> 00:17:13,320 Speaker 2: to allow you to really scale this new innovation, these 290 00:17:13,359 --> 00:17:17,359 Speaker 2: new AI algorithms without really having to break the bank. 291 00:17:20,640 --> 00:17:23,760 Speaker 1: Coming up next on Technically Speaking and Intel Podcast. 292 00:17:24,920 --> 00:17:27,400 Speaker 2: I don't want to see healthcare just become a solution 293 00:17:27,840 --> 00:17:31,240 Speaker 2: for rich people. I want AI to really be able 294 00:17:31,320 --> 00:17:34,359 Speaker 2: to scale across multiple populations. 295 00:17:35,359 --> 00:17:37,840 Speaker 1: We'll be right back after brief message from our partners 296 00:17:37,840 --> 00:17:50,600 Speaker 1: at Intel. Welcome back to Technically Speaking an Intel Podcast. 297 00:17:51,000 --> 00:17:54,400 Speaker 1: Let's pick up my conversation with Alex Flores and Peter 298 00:17:54,520 --> 00:18:02,000 Speaker 1: Ship In season one of our pod, we talked a 299 00:18:02,040 --> 00:18:06,159 Speaker 1: little bit about AI and privacy, and one of the 300 00:18:06,400 --> 00:18:10,560 Speaker 1: I guess more contentious aspects is around patient medical history 301 00:18:10,600 --> 00:18:14,040 Speaker 1: and their records. I like to get maybe Peter's thoughts 302 00:18:14,080 --> 00:18:18,399 Speaker 1: first around the ability for AI to help centralize patient 303 00:18:18,440 --> 00:18:21,520 Speaker 1: medical history and some of the dangers and some of 304 00:18:21,520 --> 00:18:24,960 Speaker 1: the anxiety that people might have, you know, having their 305 00:18:25,000 --> 00:18:31,080 Speaker 1: medical history cataloged and indexed and using AI and other algorithms. 306 00:18:31,600 --> 00:18:35,040 Speaker 3: Yeah, it's always a tricky question, Graham. Yeah, that's why 307 00:18:35,080 --> 00:18:38,679 Speaker 3: I asked it. And patient privacy here, but certainly I 308 00:18:38,680 --> 00:18:42,359 Speaker 3: mean I think we recognize the importance of patient privacy 309 00:18:42,400 --> 00:18:44,760 Speaker 3: and making sure that the patient still is in control 310 00:18:44,960 --> 00:18:48,119 Speaker 3: of his or her data, especially healthcare data here. So 311 00:18:48,680 --> 00:18:52,000 Speaker 3: from a Semen's Health in yourest perspective, as we develop 312 00:18:52,400 --> 00:18:56,720 Speaker 3: AI algorithms and technologies that require all this data for us, 313 00:18:56,760 --> 00:19:00,719 Speaker 3: it's important to establish that we focus on maintaining that 314 00:19:00,800 --> 00:19:03,920 Speaker 3: patient privacy. And to that end, one of the big 315 00:19:03,960 --> 00:19:05,960 Speaker 3: things that we do here at Seamans Health and HEARS 316 00:19:06,000 --> 00:19:09,080 Speaker 3: is we've established what we call a big Data office, 317 00:19:09,320 --> 00:19:12,480 Speaker 3: and what that big Data office is tasked with is 318 00:19:12,520 --> 00:19:17,280 Speaker 3: actually to uphold the organization in terms of making sure 319 00:19:17,320 --> 00:19:20,560 Speaker 3: that we respect that patient privacy tenant as it relates 320 00:19:20,600 --> 00:19:23,119 Speaker 3: to patient data and data that we utilize to change 321 00:19:23,240 --> 00:19:27,240 Speaker 3: these AI algorithms. So before we actually ingest any data 322 00:19:27,280 --> 00:19:31,480 Speaker 3: into our organization for the purposes of developing artificial intelligence, 323 00:19:31,960 --> 00:19:34,320 Speaker 3: all that data is actually quarantined, and what we do 324 00:19:34,440 --> 00:19:37,760 Speaker 3: is we actually de identify all that data completely remove 325 00:19:37,800 --> 00:19:42,040 Speaker 3: any PHI or PII associated with that data, even if 326 00:19:42,080 --> 00:19:45,080 Speaker 3: the data was presented to us from either our clinical 327 00:19:45,119 --> 00:19:49,000 Speaker 3: collaborators or other data sources. As being de identified, we 328 00:19:49,000 --> 00:19:52,119 Speaker 3: actually go through the extra effort of de identifying it 329 00:19:52,200 --> 00:19:55,520 Speaker 3: again before we actually utilize that. And then furthermore, we 330 00:19:55,560 --> 00:19:57,720 Speaker 3: actually then make sure that the only people who have 331 00:19:57,800 --> 00:20:01,399 Speaker 3: access to that data are folks who are actually developing 332 00:20:01,440 --> 00:20:04,439 Speaker 3: the specific AI algorithms that they're looking to develop. So 333 00:20:04,920 --> 00:20:08,960 Speaker 3: engineers within our organization have to declare what is their 334 00:20:09,119 --> 00:20:13,639 Speaker 3: intention of utilizing the data for that AI algorithm development 335 00:20:13,680 --> 00:20:16,359 Speaker 3: before they actually have access to the data. So we 336 00:20:16,400 --> 00:20:19,159 Speaker 3: have a very stringent policy here as it relates to 337 00:20:19,359 --> 00:20:22,520 Speaker 3: dealing with patient data. And again we don't ingest any 338 00:20:22,560 --> 00:20:25,480 Speaker 3: of the data directly. We appreciate and honor kind of 339 00:20:25,520 --> 00:20:28,600 Speaker 3: that relationship that the patient has with the provider in 340 00:20:28,680 --> 00:20:30,359 Speaker 3: terms of what happens to their data. 341 00:20:31,040 --> 00:20:34,480 Speaker 2: And then another example too is an INTEL One of 342 00:20:34,480 --> 00:20:37,960 Speaker 2: the solutions that we created was around federated learning, and 343 00:20:38,240 --> 00:20:41,360 Speaker 2: essentially it's really to kind of help address patient privacy 344 00:20:41,480 --> 00:20:46,560 Speaker 2: specifically with data. So having the capability of moving the 345 00:20:46,720 --> 00:20:50,560 Speaker 2: model to where the data is versus having the data 346 00:20:50,680 --> 00:20:53,440 Speaker 2: move to where the model is, so really being able 347 00:20:53,480 --> 00:20:58,080 Speaker 2: to facilitate that to help with that transparency of data 348 00:20:58,560 --> 00:21:01,680 Speaker 2: so you can move that model get the benefits of 349 00:21:01,720 --> 00:21:05,320 Speaker 2: being able to train that model on different data sets 350 00:21:05,359 --> 00:21:09,920 Speaker 2: across various organizations and so forth, but still being able 351 00:21:09,960 --> 00:21:13,160 Speaker 2: to respect the patient privacy. So that's an example of 352 00:21:13,240 --> 00:21:16,040 Speaker 2: how we can work with Seemen's health and ears and 353 00:21:16,119 --> 00:21:18,080 Speaker 2: the broader ecosystem in that space as well. 354 00:21:18,600 --> 00:21:21,960 Speaker 1: Okay, and now thinking ahead in the future, I'm actually 355 00:21:21,960 --> 00:21:23,800 Speaker 1: trying to figure out what that sort of time horizon 356 00:21:23,800 --> 00:21:26,439 Speaker 1: I should give you, guys. But let's say once my 357 00:21:26,600 --> 00:21:29,480 Speaker 1: kids have kids, so let's say twenty thirty years time, 358 00:21:30,520 --> 00:21:33,640 Speaker 1: what do you think the hospital in doctor's office would 359 00:21:33,680 --> 00:21:37,960 Speaker 1: look like in your minds using these sorts of technologies 360 00:21:37,960 --> 00:21:41,240 Speaker 1: and obviously ones that are yet to come, you. 361 00:21:41,200 --> 00:21:43,560 Speaker 3: Know, looking ahead in the crystal ball here, it's Seemens 362 00:21:43,600 --> 00:21:46,200 Speaker 3: health in yours. Where we actually see the greatest potential 363 00:21:46,240 --> 00:21:49,919 Speaker 3: for a technology like artificial intelligence is its ability to 364 00:21:50,000 --> 00:21:55,639 Speaker 3: consume multiple pieces of patient clinical information, so really able 365 00:21:55,760 --> 00:21:58,439 Speaker 3: to look at not just let's say, imaging data that 366 00:21:58,480 --> 00:22:00,840 Speaker 3: comes from that X ray or that CT scan or 367 00:22:00,960 --> 00:22:05,160 Speaker 3: MRI scan, but also looking at the patient's laboratory data, 368 00:22:05,240 --> 00:22:08,480 Speaker 3: maybe their pathology data, maybe even their genomic data here, 369 00:22:08,800 --> 00:22:12,600 Speaker 3: and then having AI actually find correlations in all that 370 00:22:12,720 --> 00:22:16,680 Speaker 3: data to help the clinician make a more informed diagnosis 371 00:22:16,840 --> 00:22:20,960 Speaker 3: or maybe a more personalized treatment for that patient. Now 372 00:22:21,000 --> 00:22:23,840 Speaker 3: I can actually then go back to my broader patient 373 00:22:23,920 --> 00:22:28,000 Speaker 3: population and look for other patients who might have similar 374 00:22:28,720 --> 00:22:32,720 Speaker 3: imaging results or genomic results as my individual patient and 375 00:22:32,800 --> 00:22:36,639 Speaker 3: apply that same treatment to that broader population with a 376 00:22:36,720 --> 00:22:39,480 Speaker 3: higher level of a success. So here we're actually talking 377 00:22:39,480 --> 00:22:43,440 Speaker 3: about true population health management. And then if you think 378 00:22:43,480 --> 00:22:46,200 Speaker 3: about a gram like fast forward to those twenty thirty years, 379 00:22:46,680 --> 00:22:51,720 Speaker 3: I could actually theoretically create a digital twin of that patient, 380 00:22:52,440 --> 00:22:55,199 Speaker 3: which again is no simple task today but one that 381 00:22:55,240 --> 00:22:57,520 Speaker 3: could happen in the future. But if you think about it, 382 00:22:57,600 --> 00:22:59,600 Speaker 3: if I then had that digital twin of that patient, 383 00:22:59,680 --> 00:23:04,000 Speaker 3: could actually start to now test certain therapies on that 384 00:23:04,040 --> 00:23:07,840 Speaker 3: patient in this kind of virtual world here and figure 385 00:23:07,880 --> 00:23:11,879 Speaker 3: out what's the optimal therapy for that patient on his 386 00:23:12,000 --> 00:23:14,800 Speaker 3: or her digital twin, and then actually apply that to 387 00:23:14,840 --> 00:23:18,359 Speaker 3: the patient with a greater level of success. And then finally, 388 00:23:18,400 --> 00:23:20,680 Speaker 3: like if I can take that now digital twin, I 389 00:23:20,680 --> 00:23:23,359 Speaker 3: could actually move all the way to the front of 390 00:23:23,400 --> 00:23:28,000 Speaker 3: that patient's experience and really start focusing on preventative medicine. 391 00:23:28,160 --> 00:23:30,960 Speaker 3: So rather than trying to figure out what's the optimal treatment, 392 00:23:31,440 --> 00:23:33,639 Speaker 3: try to figure out what's the optimal way to prevent 393 00:23:33,800 --> 00:23:36,840 Speaker 3: the patient from actually having to go into the healthcare 394 00:23:36,840 --> 00:23:38,040 Speaker 3: system in the first place. 395 00:23:38,640 --> 00:23:42,240 Speaker 2: Peter, you summarize that wonderfully. Two things I would add 396 00:23:42,320 --> 00:23:45,879 Speaker 2: is one is also the integration of other data, so 397 00:23:46,000 --> 00:23:49,480 Speaker 2: for example, maybe it's sleep data, maybe it's data from 398 00:23:49,560 --> 00:23:52,879 Speaker 2: your wearable that you're tracking, or what you're eating, and 399 00:23:52,920 --> 00:23:57,439 Speaker 2: so forth, to give you that really comprehensive view of 400 00:23:57,480 --> 00:23:59,640 Speaker 2: your health, I think is what excites me the most 401 00:23:59,680 --> 00:24:03,320 Speaker 2: about the future. But then also putting an interface on 402 00:24:03,359 --> 00:24:06,320 Speaker 2: that in the future as well. One of the technologies 403 00:24:06,320 --> 00:24:09,480 Speaker 2: that I think is really fascinating is when we get 404 00:24:09,520 --> 00:24:11,960 Speaker 2: to the point where we each have our own personal 405 00:24:12,000 --> 00:24:15,679 Speaker 2: assistant from a healthcare standpoint, So we can talk to 406 00:24:15,760 --> 00:24:19,440 Speaker 2: that personal assistant and ask them, Okay, what is the 407 00:24:19,520 --> 00:24:22,120 Speaker 2: latest results of my lab work and how does that 408 00:24:22,200 --> 00:24:25,600 Speaker 2: impact my overall healthcare picture, for example, or how's the 409 00:24:25,640 --> 00:24:28,960 Speaker 2: integration of my sleep data the last week or so? 410 00:24:29,800 --> 00:24:32,360 Speaker 2: Is there some stressful events in my life that are 411 00:24:32,520 --> 00:24:36,399 Speaker 2: really putting a burden on me? So layering it with 412 00:24:36,560 --> 00:24:39,960 Speaker 2: that personal assistant gets me excited because it really allows 413 00:24:40,000 --> 00:24:44,840 Speaker 2: the consumer to take better control of their healthcare and 414 00:24:45,080 --> 00:24:47,119 Speaker 2: hopefully impact their own outcomes. 415 00:24:47,960 --> 00:24:52,000 Speaker 1: Final question, what's the number one area you'd like to 416 00:24:52,000 --> 00:24:56,440 Speaker 1: see AI solve in healthcare? Start my with Alex. 417 00:24:57,240 --> 00:25:00,359 Speaker 2: Yes, for me, it's still around access. I don't want 418 00:25:00,359 --> 00:25:04,159 Speaker 2: to see healthcare just become a solution for rich people. 419 00:25:04,440 --> 00:25:08,520 Speaker 2: I want AI to really be able to scale where 420 00:25:08,560 --> 00:25:12,040 Speaker 2: it's seamless, where it's cost effective, where it can really 421 00:25:12,080 --> 00:25:18,119 Speaker 2: have impact across multiple populations, regardless of demographics, regardless of 422 00:25:18,359 --> 00:25:20,560 Speaker 2: where they live, and so forth. To me, that would 423 00:25:20,560 --> 00:25:23,600 Speaker 2: be what I would love to see AI be able 424 00:25:23,600 --> 00:25:24,920 Speaker 2: to accomplish. 425 00:25:25,080 --> 00:25:27,560 Speaker 3: Yeah, I think similarly to what Alex is saying, I mean, 426 00:25:27,600 --> 00:25:30,440 Speaker 3: for me, it's all about adoption. I think we've seen 427 00:25:30,480 --> 00:25:34,320 Speaker 3: how incredible this technology is in our personal lives. How 428 00:25:34,320 --> 00:25:38,959 Speaker 3: do we help healthcare also adopt this amazing technology and 429 00:25:39,000 --> 00:25:42,879 Speaker 3: again the barriers that Alex kind of mentioned, removing those barriers, 430 00:25:42,880 --> 00:25:46,439 Speaker 3: but also then helping the clinician gain confidence in this 431 00:25:46,520 --> 00:25:49,840 Speaker 3: technology as a tool that can help him or her 432 00:25:50,080 --> 00:25:53,879 Speaker 3: make that more informed diagnostic decision, that more personalized treatment 433 00:25:53,920 --> 00:25:57,199 Speaker 3: decision for the patient, and then again having that patient 434 00:25:57,280 --> 00:26:00,199 Speaker 3: benefit from this great technology. Would love to see where 435 00:26:00,600 --> 00:26:03,360 Speaker 3: that AI becomes just commonplace as part of the whole 436 00:26:03,359 --> 00:26:04,320 Speaker 3: patient experience. 437 00:26:05,000 --> 00:26:08,439 Speaker 1: Yeah, I mean, the whole history of technology has always 438 00:26:08,520 --> 00:26:12,480 Speaker 1: been to democratize its benefits to a wide population. So 439 00:26:13,200 --> 00:26:16,280 Speaker 1: I think this is going to continue with AI in healthcare. 440 00:26:16,960 --> 00:26:19,400 Speaker 1: So I'll leave it there. Thanks very much, Alex and Peter. 441 00:26:20,040 --> 00:26:22,639 Speaker 2: Thank you Graham. Peter again, thank you enough as well. 442 00:26:23,040 --> 00:26:25,800 Speaker 3: Now, this was great. Certainly appreciate the opportunity here and 443 00:26:25,920 --> 00:26:28,280 Speaker 3: certainly also value the partnership we have with Intel. 444 00:26:31,880 --> 00:26:34,920 Speaker 1: Alex and Peter have clearly demonstrated the enthusiasm for leveraging 445 00:26:34,920 --> 00:26:38,720 Speaker 1: AI and innovative technologies to provide healthcare outcomes to as 446 00:26:38,760 --> 00:26:42,840 Speaker 1: many people as possible. As AI technologies evolved, the potential 447 00:26:42,840 --> 00:26:49,280 Speaker 1: to improve preventative, diagnostic, and therapeutic healthcare for individuals is undeniable. However, 448 00:26:49,320 --> 00:26:52,959 Speaker 1: the introduction of new technologies often brings with its skeptics. 449 00:26:53,359 --> 00:26:56,640 Speaker 1: Such apprehension is not unprecedented. It has been a recurring 450 00:26:56,680 --> 00:26:59,840 Speaker 1: theme since the advent of the wheel. What remains crucial 451 00:26:59,880 --> 00:27:03,639 Speaker 1: is our commitment to advancing progress or ensuring accountability for 452 00:27:03,720 --> 00:27:06,800 Speaker 1: the deployment of these AI solutions. I've always said in 453 00:27:06,840 --> 00:27:08,919 Speaker 1: our podcast that the best technology is the kind that 454 00:27:08,960 --> 00:27:13,400 Speaker 1: can help anyone from anywhere. Healthcare is no different. I'm 455 00:27:13,440 --> 00:27:17,359 Speaker 1: really excited about these new and upcoming innovations, not for 456 00:27:17,480 --> 00:27:19,480 Speaker 1: just when I'm older, but for the sake of my 457 00:27:19,640 --> 00:27:24,960 Speaker 1: kids and their kids in the future. Be sure to 458 00:27:25,040 --> 00:27:29,119 Speaker 1: join us Tuesday, May seventh for another episode of technically Speaking, 459 00:27:29,280 --> 00:27:33,160 Speaker 1: an Intel podcast. We'll speak with Intel product expert Robert 460 00:27:33,200 --> 00:27:37,960 Speaker 1: Hollock about how ai it is transforming productivity and IT operations, 461 00:27:38,359 --> 00:27:42,080 Speaker 1: and how unleashing new capabilities will benefit everyone who uses 462 00:27:42,119 --> 00:27:47,880 Speaker 1: a computer. Technically Speaking was produced by a Ruby Studio 463 00:27:48,160 --> 00:27:51,720 Speaker 1: from iHeartRadio in partnership with Intel, and hosted by me 464 00:27:52,040 --> 00:27:56,240 Speaker 1: Graham Class. Our executive producer is Molly Socia, our EP 465 00:27:56,359 --> 00:28:00,000 Speaker 1: of Post production is James Foster, and our supervising producer 466 00:28:00,440 --> 00:28:04,520 Speaker 1: is Nika Swinton. This episode was edited by Sierra Spreen 467 00:28:04,840 --> 00:28:09,320 Speaker 1: and was written by Molly Sosha and Nick Firshaw.