{"id":18362,"date":"2024-02-07T11:39:14","date_gmt":"2024-02-07T11:39:14","guid":{"rendered":"https:\/\/interhospi.com\/?p=18362"},"modified":"2024-02-07T11:39:14","modified_gmt":"2024-02-07T11:39:14","slug":"who-releases-ai-ethics-and-governance-guidance-for-large-multi-modal-models","status":"publish","type":"post","link":"https:\/\/interhospi.com\/who-releases-ai-ethics-and-governance-guidance-for-large-multi-modal-models\/","title":{"rendered":"WHO releases AI ethics and governance guidance for large multi-modal models"},"content":{"rendered":"
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WHO releases AI ethics and governance guidance for large multi-modal models<\/h1>\/ in Featured Articles<\/a> <\/span><\/span><\/header>\n<\/div><\/section>
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The World Health Organization (WHO) is releasing new guidance on the ethics and governance of large multi-modal models (LMMs) \u2013 a type of fast growing generative artificial intelligence (AI) technology with applications across health care.<\/strong><\/h3>\n

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The guidance outlines over 40 recommendations for consideration by governments, technology companies, and healthcare providers to ensure the appropriate use of LMMs to promote and protect the health of populations. LMMs can accept one or more type of data inputs, such as text, videos, and images, and generate diverse outputs not limited to the type of data inputted. LMMs are unique in their mimicry of human communication and ability to carry out tasks they were not explicitly programmed to perform. LMMs have been adopted faster than any consumer application in history, with several platforms \u2013 such as ChatGPT, Bard and Bert \u2013 entering the public consciousness in 2023.<\/p>\n

\u201cGenerative AI technologies have the potential to improve health care but only if those who develop, regulate, and use these technologies identify and fully account for the associated risks,\u201d said Dr Jeremy Farrar, WHO Chief Scientist. \u201cWe need transparent information and policies to manage the design, development, and use of LMMs to achieve better health outcomes and overcome persisting health inequities.\u201d<\/p>\n

Potential benefits and risks<\/h4>\n

The new WHO guidance outlines five broad applications of LMMs for health:
\n1. Diagnosis and clinical care, such as responding to patients\u2019 written queries;
\n2. Patient-guided use, such as for investigating symptoms and treatment;
\n3. Clerical and administrative tasks, such as documenting and summarizing patient visits within electronic health records;
\n4. Medical and nursing education, including providing trainees with simulated patient encounters, and;
\n5. Scientific research and drug development, including to identify new compounds.<\/p>\n

While LMMs are starting to be used for specific health-related purposes, there are also documented risks of producing false, inaccurate, biased, or incomplete statements, which could harm people using such information in making health decisions. Furthermore, LMMs may be trained on data that are of poor quality or biased, whether by race, ethnicity, ancestry, sex, gender identity, or age.<\/p>\n

The guidance also details broader risks to health systems, such as accessibility and affordability of the best-performing LMMs. LMMS can also encourage \u2018automation bias\u2019 by healthcare professionals and patients, whereby errors are overlooked that would otherwise have been identified or difficult choices are improperly delegated to a LMM. LMMs, like other forms of AI, are also vulnerable to cybersecurity risks that could endanger patient information or the trustworthiness of these algorithms and the provision of health care more broadly. To create safe and effective LMMs, WHO underlines the need for engagement of various stakeholders: governments, technology companies, healthcare providers, patients, and civil society, in all stages of development and deployment of such technologies, including their oversight and regulation. \u201cGovernments from all countries must cooperatively lead efforts to effectively regulate the development and use of AI technologies, such as LMMs,\u201d said Dr Alain Labrique, WHO Director for Digital Health and Innovation in the Science Division.<\/p>\n

Key recommendations<\/h4>\n

The new WHO guidance includes recommendations for governments, who have the primary responsibility to set standards for the development and deployment of LMMs, and their integration and use for public health and medical purposes. For example, governments should:
\n\u2022 Invest in or provide not-for-profit or public infrastructure, including computing power and public data sets, accessible to developers in the public, private and not-for-profit sectors, that requires users to adhere to ethical principles and values in exchange for access.
\n\u2022 Use laws, policies and regulations to ensure that LMMs and applications used in health care and medicine, irrespective of the risk or benefit associated with the AI technology, meet ethical obligations and human rights standards that affect, for example, a person\u2019s dignity, autonomy or privacy.
\n\u2022 Assign an existing or new regulatory agency to assess and approve LMMs and applications intended for use in health care or medicine \u2013 as resources permit.
\n\u2022 Introduce mandatory post-release auditing and impact assessments, including for data protection and human rights, by independent third parties when an LMM is deployed on a large scale. The auditing and impact assessments should be published and should include outcomes and impacts disaggregated by the type of user, including for example by age, race or disability.<\/p>\n

The guidance also includes the following key recommendations for developers of LMMs, who should ensure that:
\n\u2022 LMMs are designed not only by scientists and engineers. Potential users and all direct and indirect stakeholders, including medical providers, scientific researchers, healthcare professionals and patients, should be engaged from the early stages of AI development in structured, inclusive, transparent design and given opportunities to raise ethical issues, voice concerns and provide input for the AI application under consideration.
\n\u2022 LMMs are designed to perform well-defined tasks with the necessary accuracy and reliability to improve the capacity of health systems and advance patient interests. Developers should also be able to
\npredict and understand potential secondary outcomes.<\/p>\n<\/div><\/section>
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Download the new document<\/strong> <\/em>
\nEthics and governance of artificial intelligence for health: guidance on large multi-modal models. <\/em>https:\/\/iris.who.int\/handle\/10665\/375579<\/em><\/a><\/p>\n<\/div><\/section>
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