{"id":174422,"date":"2016-11-23T22:00:48","date_gmt":"2016-11-24T03:00:48","guid":{"rendered":"http:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/artificial-intelligence-in-medicine-an-introduction\/"},"modified":"2016-11-23T22:00:48","modified_gmt":"2016-11-24T03:00:48","slug":"artificial-intelligence-in-medicine-an-introduction","status":"publish","type":"post","link":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/artificial-intelligence\/artificial-intelligence-in-medicine-an-introduction\/","title":{"rendered":"Artificial Intelligence in Medicine: An Introduction"},"content":{"rendered":"<p><p>Acknowledgement                                                                      The material on this page is taken from Chapter 19 of              Guide to Medical              Informatics, the Internet and Telemedicine (First              Edition) by Enrico Coiera (reproduced here with the              permission of the author).                                                          Introduction                                                          <\/p>\n<p>                From the very earliest moments in the modern                history of the computer, scientists have dreamed of                creating an 'electronic brain'. Of all the modern                technological quests, this search to create                artificially intelligent (AI) computer systems has                been one of the most ambitious and, not                surprisingly, controversial.              <\/p>\n<p>                It also seems that very early on, scientists and                doctors alike were captivated by the potential such                a technology might have in medicine (e.g. Ledley                and Lusted, 1959). With intelligent computers able                to store and process vast stores of knowledge, the                hope was that they would become perfect 'doctors in                a box', assisting or surpassing clinicians with                tasks like diagnosis.              <\/p>\n<p>                With such motivations, a small but talented                community of computer scientists and healthcare                professionals set about shaping a research program                for a new discipline called Artificial Intelligence                in Medicine (AIM). These researchers had a bold                vision of the way AIM would revolutionise medicine,                and push forward the frontiers of technology.              <\/p>\n<p>                AI in medicine at that time was a largely US-based                research community. Work originated out of a number                of campuses, including MIT-Tufts, Pittsburgh,                Stanford and Rutgers (e.g. Szolovits, 1982; Clancey                and Shortliffe, 1984; Miller, 1988). The field                attracted many of the best computer scientists and,                by any measure, their output in the first decade of                the field remains a remarkable achievement.              <\/p>\n<p>                In reviewing this new field in 1984, Clancey and                Shortliffe provided the following definition:              <\/p>\n<p>                Much has changed since then, and today this                definition would be considered narrow in scope and                vision. Today, the importance of diagnosis as a                task requiring computer support in routine clinical                situations receives much less emphasis (J. Durinck,                E. Coiera, R. Baud, et al., \"The Role of Knowledge                Based Systems in Clinical Practice,\" in: eds                Barahona and Christenen, Knowledge and Decisions in                Health Telematics - The Next Decade, IOS Press,                Amsterdam, pp. 199- 203, 1994), So, despite the                focus of much early research on understanding and                supporting the clinical encounter, expert systems                today are more likely to be found used in clinical                laboratories and educational settings, for clinical                surveillance, or in data-rich areas like the                intensive care setting. For its day, however, the                vision captured in this definition of AIM was                revolutionary.              <\/p>\n<p>                After the first euphoria surrounding the promise of                artificially intelligent diagnostic programmes, the                last decade has seen increasing disillusion amongst                many with the potential for such systems. Yet,                while there certainly have been ongoing challenges                in developing such systems, they actually have                proven their reliability and accuracy on repeated                occasions (Shortliffe, 1987).              <\/p>\n<p>                Much of the difficulty has been the poor way in                which they have fitted into clinical practice,                either solving problems that were not perceived to                be an issue, or imposing changes in the way                clinicians worked. What is now being realised is                that when they fill an appropriately role,                intelligent programmes do indeed offer significant                benefits. One of the most important tasks now                facing developers of AI-based systems is to                characterise accurately those aspects of medical                practice that are best suited to the introduction                of artificial intelligence systems.              <\/p>\n<p>                In the remainder of this chapter, the initial focus                will thus remain on the different roles AIM systems                can play in clinical practice, looking particularly                to see where clear successes can be identified, as                well as looking to the future. The next chapter                will take a more technological focus, and look at                the way AIM systems are built. A variety of                technologies including expert systems and neural                networks will be discussed. The final chapter in                this section on intelligent decision support will                look at the way AIM can support the interpretation                of patient signals that come off clinical                monitoring devices.              <\/p>\n<p>                      In his opinion, there were no ultimately                      useful measures of intelligence. It was                      sufficient that an objective observer could                      not tell the difference in conversation                      between a human and a computer for us to                      conclude that the computer was intelligent.                      To cancel out any potential observer biases,                      Turing's test put the observer in a room,                      equipped with a computer keyboard and screen,                      and made the observer talk to the test                      subjects only using these. The observer would                      engage in a discussion with the test subjects                      using the printed word, much as one would                      today by exchanging e-mail with a remote                      colleague. If a set of observers could not                      distinguish the computer from another human                      in over 50% of cases, then Turing felt that                      one had to accept that the computer was                      intelligent.                    <\/p>\n<p>                      Another consequence of the Turing test is                      that it says nothing about how one builds an                      intelligent artefact, thus neatly avoiding                      discussions about whether the artefact needed                      to in anyway mimic the structure of the human                      brain or our cognitive processes. It really                      didn't matter how the system was built in                      Turing's mind. Its intelligence should only                      to be assessed based upon its overt                      behaviour.                    <\/p>\n<p>                      There have been attempts to build systems                      that can pass Turing's test in recent years.                                            Some have managed to convince at least some                      humans in a panel of judges that they too are                      human, but none have yet passed the mark                      set by Turing.                    <\/p>\n<p>                An alternative approach to strong AI is to look at                human cognition and decide how it can be supported                in complex or difficult situations. For example, a                fighter pilot may need the help of intelligent                systems to assist in flying an aircraft that is too                complex for a human to operate on their own. These                'weak' AI systems are not intended to have an                independent existence, but are a form of 'cognitive                prosthesis' that supports a human in a variety of                tasks.              <\/p>\n<p>                AIM systems are by and large intended to support                healthcare workers in the normal course of their                duties, assisting with tasks that rely on the                manipulation of data and knowledge. An AI system                could be running within an electronic medical                record system, for example, and alert a clinician                when it detects a contraindication to a planned                treatment. It could also alert the clinician when                it detected patterns in clinical data that                suggested significant changes in a patient's                condition.              <\/p>\n<p>                Along with tasks that require reasoning with                medical knowledge, AI systems also have a very                different role to play in the process of scientific                research. In particular, AI systems have the                capacity to learn, leading to the discovery of new                phenomena and the creation of medical knowledge.                For example, a computer system can be used to                analyse large amounts of data, looking for complex                patterns within it that suggest previously                unexpected associations. Equally, with enough of a                model of existing medical knowledge, an AI system                can be used to show how a new set of experimental                observations conflict with the existing theories.                We shall now examine such capabilities in more                detail.              <\/p>\n<p>                Expert or knowledge-based systems are the commonest                type of AIM system in routine clinical use. They                contain medical knowledge, usually about a very                specifically defined task, and are able to reason                with data from individual patients to come up with                reasoned conclusions. Although there are many                variations, the knowledge within an expert system                is typically represented in the form of a set of                rules.              <\/p>\n<p>                There are many different types of clinical task to                which expert systems can be applied.              <\/p>\n<p>                Generating alerts and reminders. In                so-called real-time situations, an expert system                attached to a monitor can warn of changes in a                patient's condition. In less acute circumstances,                it might scan laboratory test results or drug                orders and send reminders or warnings through an                e-mail system.              <\/p>\n<p>                Diagnostic assistance. When a patient's case                is complex, rare or the person making the diagnosis                is simply inexperienced, an expert system can help                come up with likely diagnoses based on patient                data.              <\/p>\n<p>                Therapy critiquing and planning. Systems can                either look for inconsistencies, errors and                omissions in an existing treatment plan, or can be                used to formulate a treatment based upon a                patient's specific condition and accepted treatment                guidelines.              <\/p>\n<p>                Agents for information retrieval. Software                'agents' can be sent to search for and retrieve                information, for example on the Internet, that is                considered relevant to a particular problem. The                agent contains knowledge about its user's                preferences and needs, and may also need to have                medical knowledge to be able to assess the                importance and utility of what it finds.              <\/p>\n<p>                Image recognition and interpretation. Many                medical images can now be automatically                interpreted, from plane X-rays through to more                complex images like angiograms, CT and MRI scans.                This is of value in mass-screenings, for example,                when the system can flag potentially abnormal                images for detailed human attention.              <\/p>\n<p>                There are numerous reasons why more expert systems                are not in routine use                 (Coiera, 1994). Some require the existence of                an electronic medical record system to supply their                data, and most institutions and practices do not                yet have all their working data available                electronically. Others suffer from poor human                interface design and so do not get used even if                they are of benefit.              <\/p>\n<p>                Much of the reluctance to use systems simply arose                because expert systems did not fit naturally into                the process of care, and as a result using them                required additional effort from already busy                individuals. It is also true, but perhaps                dangerous, to ascribe some of the reluctance to use                early systems upon the technophobia or computer                illiteracy of healthcare workers. If a system is                perceived by those using it to be beneficial, then                it will be used. If not, independent of its true                value, it will probably be rejected.              <\/p>\n<p>                Happily, there are today very many systems that have                made it into clinical use. Many of these are                small, but nevertheless make positive contributions                to care. In the next two sections, we will examine                some of the more successful examples of                knowledge-based clinical systems, in an effort to                understand the reasons behind their success, and                the role they can play.              <\/p>\n<p>                In the first decade of AIM, most research systems                were developed to assist clinicians in the process                of diagnosis, typically with the intention that it                would be used during a clinical encounter with a                patient. Most of these early systems did not                develop further than the research laboratory,                partly because they did not gain sufficient support                from clinicians to permit their routine                introduction.              <\/p>\n<p>                It is clear that some of the psychological basis                for developing this type of support is now                considered less compelling, given that situation                assessment seems to be a bigger issue than                diagnostic formulation. Some of these systems have                continued to develop, however, and have transformed                in part into educational systems.              <\/p>\n<p>                DXplain is an example of                one of these clinical decision support systems,                developed at the Massachusetts General Hospital                (Barnett et al., 1987). It is used to assist in the                process of diagnosis, taking a set of clinical                findings including signs, symptoms, laboratory data                and then produces a ranked list of diagnoses. It                provides justification for each of differential                diagnosis, and suggests further investigations. The                system contains a data base of crude probabilities                for over 4,500 clinical manifestations that are                associated with over 2,000 different diseases.              <\/p>\n<p>                DXplain is in routine use at a number of hospitals                and medical schools, mostly for clinical education                purposes, but is also available for clinical                consultation. It also has a role as an electronic                medical textbook. It is able to provide a                description of over 2,000 different diseases,                emphasising the signs and symptoms that occur in                each disease and provides recent references                appropriate for each specific disease.              <\/p>\n<p>                Decision support systems need not be 'stand alone'                but can be deeply integrated into an electronic                medical record system. Indeed, such integration                reduces the barriers to using such a system, by                crafting them more closely into clinical working                processes, rather than expecting workers to create                new processes to use them.              <\/p>\n<p>                The HELP system is an example of                this type of knowledge-based hospital information                system, which began operation in 1980 (Kuperman et                al., 1990; Kuperman et al., 1991). It not only                supports the routine applications of a hospital                information system (HIS) including management of                admissions and discharges and order entry, but also                provides a decision support function. The decision                support system has been actively incorporated into                the functions of the routine HIS applications.                Decision support provide clinicians with alerts and                reminders, data interpretation and patient                diagnosis facilities, patient management                suggestions and clinical protocols. Activation of                the decision support is provided within the                applications but can also be triggered                automatically as clinical data is entered into the                patient's computerised medical record.              <\/p>\n<p>                One of the most successful areas in which expert                systems are applied is in the clinical laboratory.                Practitioners may be unaware that while the printed                report they receive from a laboratory was checked                by a pathologist, the whole report may now have                been generated by a computer system that has                automatically interpreted the test results.                Examples of such systems include the following.              <\/p>\n<p>                Laboratory expert systems usually do not intrude                into clinical practice. Rather, they are embedded                within the process of care, and with the exception                of laboratory staff, clinicians working with                patients do not need to interact with them. For the                ordering clinician, the system prints a report with                a diagnostic hypothesis for consideration, but does                not remove responsibility for information                gathering, examination, assessment and treatment.                For the pathologist, the system cuts down the                workload of generating reports, without removing                the need to check and correct reports.              <\/p>\n<\/p>\n<p>                All scientists are familiar with the statistical                approach to data analysis. Given a particular                hypothesis, statistical tests are applied to data                to see if any relationships can be found between                different parameters. Machine learning systems can                go much further. They look at raw data and then                attempt to hypothesise relationships within the                data, and newer learning systems are able to                produce quite complex characterisations of those                relationships. In other words they attempt to                discover humanly understandable concepts.              <\/p>\n<p>                Learning techniques include neural networks, but                encompass a large variety of other methods as well,                each with their own particular characteristic                benefits and difficulties. For example, some                systems are able to learn decision trees from                examples taken from data (Quinlan, 1986). These                trees look much like the classification hierarchies                discussed in Chapter 10, and can be used to help in                diagnosis.              <\/p>\n<p>                Medicine has formed a rich test-bed for machine                learning experiments in the past, allowing                scientists to develop complex and powerful learning                systems. While there has been much practical use of                expert systems in routine clinical settings, at                present machine learning systems still seem to be                used in a more experimental way. There are,                however, many situations in which they can make a                significant contribution.              <\/p>\n<p>                      Shortliffe EH. The adolescence of AI in                      medicine: will the field come of age in the                      '90s? Artif Intell Med. 1993 Apr;5(2):93-106.                      Review.                    <\/p>\n<p><!-- Auto Generated --><\/p>\n<p>Read more here:<\/p>\n<p><a target=\"_blank\" rel=\"nofollow\" href=\"http:\/\/www.openclinical.org\/aiinmedicine.html\" title=\"Artificial Intelligence in Medicine: An Introduction\">Artificial Intelligence in Medicine: An Introduction<\/a><\/p>\n","protected":false},"excerpt":{"rendered":"<p> Acknowledgement The material on this page is taken from Chapter 19 of Guide to Medical Informatics, the Internet and Telemedicine (First Edition) by Enrico Coiera (reproduced here with the permission of the author). Introduction From the very earliest moments in the modern history of the computer, scientists have dreamed of creating an 'electronic brain'.  <a href=\"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/artificial-intelligence\/artificial-intelligence-in-medicine-an-introduction\/\">Continue reading <span class=\"meta-nav\">&rarr;<\/span><\/a><\/p>\n","protected":false},"author":4,"featured_media":0,"comment_status":"closed","ping_status":"closed","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[187742],"tags":[],"class_list":["post-174422","post","type-post","status-publish","format-standard","hentry","category-artificial-intelligence"],"_links":{"self":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/posts\/174422"}],"collection":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/users\/4"}],"replies":[{"embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/comments?post=174422"}],"version-history":[{"count":0,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/posts\/174422\/revisions"}],"wp:attachment":[{"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/media?parent=174422"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/categories?post=174422"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/www.euvolution.com\/prometheism-transhumanism-posthumanism\/wp-json\/wp\/v2\/tags?post=174422"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}