{"id":2991,"date":"2019-03-29T17:59:17","date_gmt":"2019-03-29T08:59:17","guid":{"rendered":"http:\/\/163.180.4.222\/lab\/?p=2991"},"modified":"2019-03-29T18:08:00","modified_gmt":"2019-03-29T09:08:00","slug":"ai-for-the-m-d","status":"publish","type":"post","link":"https:\/\/biochemistry.khu.ac.kr\/lab\/?p=2991","title":{"rendered":"AI for the M.D"},"content":{"rendered":"<p>&nbsp;<\/p>\n<p>&nbsp;<\/p>\n<p id=\"p-5\">In 1970 in\u00a0<em>The New England Journal of Medicine<\/em>, William Schwartz predicted that by the year 2000, much of the intellectual function of medicine could be either taken over or at least substantially augmented by \u201cexpert systems\u201d\u2014a branch of artificial intelligence (AI). Schwartz hoped that the medical school curriculum would be \u201credirected toward the social and psychologic aspects of health care\u201d and that medical schools would attract applicants interested in \u201cbehavioral and social sciences and \u2026 the information sciences and their application to medicine.\u201d But Schwartz&#8217;s dream of smart medical technologies, for the most part, remains just that.<\/p>\n<p>&nbsp;<\/p>\n<p><a class=\"fragment-images colorbox-load highwireFiguresMarkupProcessor-processed cboxElement\" style=\"box-sizing: inherit; background-color: transparent; color: gray; text-decoration: none; outline: 0px; font-weight: bold;\" title=\"\" href=\"http:\/\/science.sciencemag.org\/content\/sci\/363\/6434\/1402\/F1.large.jpg?width=800&amp;height=600&amp;carousel=1\" rel=\"gallery-fragment-images-533541085\" data-figure-caption=\"&lt;div class=&quot;highwire-markup&quot;&gt;&lt;\/div&gt;\" data-icon-position=\"\" data-hide-link-title=\"0\"><span class=\"hw-responsive-img\"><img decoding=\"async\" class=\"fragment-image  lazyloaded\" src=\"http:\/\/science.sciencemag.org\/content\/sci\/363\/6434\/1402\/F1.medium.gif\" data-src=\"http:\/\/science.sciencemag.org\/content\/sci\/363\/6434\/1402\/F1.medium.gif\" \/><\/span><\/a><\/p>\n<figure id=\"F1\" class=\"fig pos-float type-figure nonresearch-content odd figure\">\n<div class=\"figure__head highwire-figure\">\n<div class=\"figure__options\">\n<ul class=\"highwire-figure-links\">\n<li class=\"0 first last\"><a class=\"highwire-figure-link highwire-figure-link-newtab link-icon\" href=\"http:\/\/science.sciencemag.org\/content\/sci\/363\/6434\/1402\/F1.large.jpg\" target=\"_blank\" rel=\"noopener noreferrer\"><i class=\"fa fa-external-link\"><\/i>\u00a0<span class=\"title\">Open in new tab<\/span><\/a>&nbsp;<\/li>\n<\/ul>\n<\/div>\n<\/div>\n<\/figure>\n<figure id=\"F2\" class=\"fig pos-float type-figure nonresearch-content odd figure\">\n<div class=\"figure__head highwire-figure\">\n<div class=\"fig-inline\"><a class=\"fragment-images colorbox-load highwireFiguresMarkupProcessor-processed cboxElement\" style=\"box-sizing: inherit; background-color: transparent; color: #37588a; text-decoration: none; font-weight: bold;\" title=\"Freed from a variety of tasks by artificial intelligence, doctors will have more time with patients, Topol predicts.\" href=\"http:\/\/science.sciencemag.org\/content\/sci\/363\/6434\/1402\/F2.large.jpg?width=800&amp;height=600&amp;carousel=1\" rel=\"gallery-fragment-images-533541085\" data-figure-caption=\"&lt;div class=&quot;highwire-markup&quot;&gt;&lt;p id=&quot;p-4&quot; class=&quot;first-child&quot;&gt;Freed from a variety of tasks by artificial intelligence, doctors will have more time with patients, Topol predicts.&lt;\/p&gt;&lt;q class=&quot;attrib&quot; id=&quot;attrib-1&quot;&gt;PHOTO: HERO IMAGES INC.\/ALAMY STOCK PHOTO&lt;\/q&gt;&lt;div class=&quot;sb-div caption-clear&quot;\/&gt;&lt;\/div&gt;\" data-icon-position=\"\" data-hide-link-title=\"0\"><span class=\"hw-responsive-img\"><img decoding=\"async\" class=\"fragment-image  lazyloaded\" src=\"http:\/\/science.sciencemag.org\/content\/sci\/363\/6434\/1402\/F2.medium.gif\" aria-describedby=\"F2-caption\" data-src=\"http:\/\/science.sciencemag.org\/content\/sci\/363\/6434\/1402\/F2.medium.gif\" \/><\/span><\/a><\/div>\n<div class=\"figure__options\">\n<ul class=\"highwire-figure-links\">\n<li class=\"0 first last\"><a class=\"highwire-figure-link highwire-figure-link-newtab link-icon\" href=\"http:\/\/science.sciencemag.org\/content\/sci\/363\/6434\/1402\/F2.large.jpg\" target=\"_blank\" rel=\"noopener noreferrer\"><i class=\"fa fa-external-link\"><\/i>\u00a0<span class=\"title\">Open in new tab<\/span><\/a><\/li>\n<\/ul>\n<\/div>\n<\/div><figcaption id=\"F2-caption\" class=\"fig-caption attrib\">\n<p id=\"p-4\" class=\"first-child\">Freed from a variety of tasks by artificial intelligence, doctors will have more time with patients, Topol predicts.<\/p>\n<p><q id=\"attrib-1\" class=\"attrib\">PHOTO: HERO IMAGES INC.\/ALAMY STOCK PHOTO<\/q><\/p>\n<div class=\"sb-div caption-clear\"><\/div>\n<\/figcaption><\/figure>\n<p>&nbsp;<\/p>\n<p id=\"p-6\">Eric Topol, however, is optimistic about the future of health care. In\u00a0<em>Deep Medicine<\/em>, he anticipates that new machine learning technologies will improve the precision and accuracy of disease diagnosis, thus providing a better way to identify the best therapies. Like Schwartz, he hopes that the time freed up by these approaches will be devoted to reviving humane medical practices.<\/p>\n<p id=\"p-7\">\u201cArtificial intelligence\u201d initially took a very symbolic approach to replicating human reasoning. Problems were described as logic puzzles, and inference was based on rules of symbolic logic. Problems were solved by executing a sequence of steps, and natural language was addressed by building dictionaries and grammars around words and parts of speech. Even images, often reduced to line drawings, were represented by discrete elements such as vertices and line segments.<\/p>\n<p id=\"p-8\">Around 1980, a small group of computer scientists proposed an alternative: What if a large number of simple computational elements modeled (very roughly) on biological neurons were to be used instead? As Geoffrey Hinton, one of those pioneers, explained in a talk at the Massachusetts Institute of Technology in 2014, we were about six orders of magnitude short of the computational power required for such a feat in 1980. Only within the past decade have we developed the hardware and algorithms needed to achieve high-performance \u201cneural networks.\u201d<\/p>\n<p id=\"p-9\">Topol describes the basics of so-called \u201cdeep\u201d neural networks\u2014\u201calgorithms that permit software to train itself to perform tasks by processing multilayered networks of data\u201d\u2014by summarizing the kinds of problems for which these methods have been remarkably successful and reciting the litany of concerns arising from inscrutable decisions made by such networks (\u201cbaked in\u201d biases, privacy issues, and the susceptibility of computer models to seemingly imperceptible changes to input data). \u201c[They] still don&#8217;t know exactly what features account for its success,\u201d he writes about a Stanford computer program that matches the diagnostic success rate of dermatologists.<\/p>\n<p id=\"p-10\">Most AI successes so far in health care have come from the application of image-interpretation methods in domains such as radiology, pathology, dermatology, and ophthalmology. Many of these strategies are restricted, for now, to the research literature, although the U.S. Food and Drug Administration has recently approved a handful of such systems.<\/p>\n<p id=\"p-11\">Techniques for assisting what Topol calls \u201cclinicians without patterns\u201d\u2014medical professionals who make assessments and formulate plans by integrating heterogeneous data from a patient&#8217;s records, medical literature, and talking with patients and their families\u2014are at even earlier stages of development. These include digesting the medical literature in general internal medicine, diagnosing atrial fibrillation in cardiology, identifying the best available treatment in oncology, introducing precision robotics in surgery, and interpreting subtle cues from online communications in mental health (to which he devotes an entire chapter). Later chapters examine how AI could enhance the operations of the overall health system, aid in basic scientific discovery, and help bring nutrition and diet into consideration.<\/p>\n<p id=\"p-12\">Last, Topol turns to his vision of how AI can provide a virtual medical assistant to clinicians and how these technologies can lead to the resurgence of the empathy-based care that Topol\u2014and many others\u2014miss in current health care. \u201cAI can help achieve the gift of time with patients,\u201d and that extra time can develop empathy, which \u201cis not something machines can truly simulate.\u201d<\/p>\n<p id=\"p-13\">The great contribution of this book is that Topol synthesizes the fragmentary views that we who work in this field gain from day-to-day reading into a cohesive vision of a future in which medical care is about human care. Alas, achieving that depends on much more than improved technological support for clinical medicine. Hopefully, the economic and administrative forces that have done much to frustrate other recent visionaries will not derail this new plan.<\/p>\n<p>&nbsp;<\/p>\n<p>&nbsp;<\/p>\n<p>(\uc6d0\ubb38: <a href=\"http:\/\/science.sciencemag.org\/content\/363\/6434\/1402?rss=1\">\uc5ec\uae30<\/a>\ub97c \ud074\ub9ad\ud558\uc138\uc694~)<\/p>\n<p>&nbsp;<\/p>\n<p>&nbsp;<\/p>\n<p>&nbsp;<\/p>\n","protected":false},"excerpt":{"rendered":"<p>&nbsp; &nbsp; In 1970 in\u00a0The New England Journal of Medicine, William Schwartz predicted that by the year 2000, much of the intellectual function of medicine<a href=\"https:\/\/biochemistry.khu.ac.kr\/lab\/?p=2991\" class=\"more-link\">(more&#8230;)<\/a><\/p>\n","protected":false},"author":1,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"_monsterinsights_skip_tracking":false,"_monsterinsights_sitenote_active":false,"_monsterinsights_sitenote_note":"","_monsterinsights_sitenote_category":0,"_jetpack_newsletter_access":"","_jetpack_dont_email_post_to_subs":false,"_jetpack_newsletter_tier_id":0,"_jetpack_memberships_contains_paywalled_content":false,"_jetpack_memberships_contains_paid_content":false,"footnotes":"","jetpack_publicize_message":"","jetpack_publicize_feature_enabled":true,"jetpack_social_post_already_shared":true,"jetpack_social_options":{"image_generator_settings":{"template":"highway","default_image_id":0,"font":"","enabled":false},"version":2},"jetpack_post_was_ever_published":false},"categories":[32,33,35,29],"tags":[],"class_list":["post-2991","post","type-post","status-publish","format-standard","hentry","category-essays-on-science","category-do-biology","category-lets-do-computer-science","category-lets-do-science"],"aioseo_notices":[],"jetpack_publicize_connections":[],"jetpack_featured_media_url":"","jetpack-related-posts":[{"id":2470,"url":"https:\/\/biochemistry.khu.ac.kr\/lab\/?p=2470","url_meta":{"origin":2991,"position":0},"title":"Medicine in the digital age","author":"biochemistry","date":"January 8, 2019","format":false,"excerpt":"\u00a0 \u00a0 As\u00a0Nature Medicine\u00a0celebrates its 25th anniversary, we bring you a special Focus on Digital Medicine that highlights the new technologies transforming medicine and healthcare, as well as the related regulatory challenges ahead. \u00a0 \u00a0 Digital medicine, defined as the use of digital tools to upgrade the practice of medicine\u2026","rel":"","context":"In &quot;Essays on Science&quot;","block_context":{"text":"Essays on Science","link":"https:\/\/biochemistry.khu.ac.kr\/lab\/?cat=32"},"img":{"alt_text":"","src":"","width":0,"height":0},"classes":[]},{"id":1432,"url":"https:\/\/biochemistry.khu.ac.kr\/lab\/?p=1432","url_meta":{"origin":2991,"position":1},"title":"An ethical way forward for AI","author":"biochemistry","date":"August 24, 2018","format":false,"excerpt":"\u00a0 \u00a0 (\uc6d0\ubb38: \uc5ec\uae30\ub97c \ud074\ub9ad\ud558\uc138\uc694~) \u00a0 Science\u00a0\u00a024 Aug 2018: Vol. 361, Issue 6404, pp. 763-765 DOI: 10.1126\/science.361.6404.763-q \u00a0 \u00a0 \u00a0 Artificial intelligence (AI) is becoming prevalent in everyday life. Within the next 5 years, an estimated 55% of households worldwide are expected to own a voice assistant. 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It was a year when CRISPR-ed plants, therapies and babies stole the headlines, but there are also some surprises on this list. \u00a0 While the world\u2019s attention focused on claims of custom babies using CRISPR, Editas received approval to test a\u2026","rel":"","context":"In &quot;Essays on Science&quot;","block_context":{"text":"Essays on Science","link":"https:\/\/biochemistry.khu.ac.kr\/lab\/?cat=32"},"img":{"alt_text":"","src":"","width":0,"height":0},"classes":[]},{"id":3479,"url":"https:\/\/biochemistry.khu.ac.kr\/lab\/?p=3479","url_meta":{"origin":2991,"position":5},"title":"Looking for the start of metabolic disease in the gut","author":"biochemistry","date":"May 9, 2019","format":false,"excerpt":"\u00a0 Max Nieuwdorp is an internist, endocrinologist and vascular medicine specialist at Amsterdam University Medical Centers. 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