medical safety
MedSafetyBench: Evaluating and Improving the Medical Safety of Large Language Models
However, there is little to no understanding of the notion of medical safety in the context of LLMs, let alone how to evaluate and improve it. To address this gap, we first define the notion of medical safety in LLMs based on the Principles of Medical Ethics set forth by the American Medical Association.
- Europe > United Kingdom (0.14)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
- North America > United States > Virginia > Albemarle County > Charlottesville (0.04)
- Research Report > New Finding (1.00)
- Research Report > Experimental Study (0.93)
MedSafetyBench: Evaluating and Improving the Medical Safety of Large Language Models
As large language models (LLMs) develop increasingly sophisticated capabilities and find applications in medical settings, it becomes important to assess their medical safety due to their far-reaching implications for personal and public health, patient safety, and human rights. However, there is little to no understanding of the notion of medical safety in the context of LLMs, let alone how to evaluate and improve it. To address this gap, we first define the notion of medical safety in LLMs based on the Principles of Medical Ethics set forth by the American Medical Association. We then leverage this understanding to introduce MedSafetyBench, the first benchmark dataset designed to measure the medical safety of LLMs. We demonstrate the utility of MedSafetyBench by using it to evaluate and improve the medical safety of LLMs. Our results show that publicly-available medical LLMs do not meet standards of medical safety and that fine-tuning them using MedSafetyBench improves their medical safety while preserving their medical performance. By introducing this new benchmark dataset, our work enables a systematic study of the state of medical safety in LLMs and motivates future work in this area, paving the way to mitigate the safety risks of LLMs in medicine.
- Europe > United Kingdom (0.14)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
- North America > United States > Virginia > Albemarle County > Charlottesville (0.04)
- Research Report > New Finding (1.00)
- Research Report > Experimental Study (0.93)
- Law (1.00)
- Health & Medicine > Pharmaceuticals & Biotechnology (1.00)
- Government (1.00)
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MedSafetyBench: Evaluating and Improving the Medical Safety of Large Language Models
As large language models (LLMs) develop increasingly sophisticated capabilities and find applications in medical settings, it becomes important to assess their medical safety due to their far-reaching implications for personal and public health, patient safety, and human rights. However, there is little to no understanding of the notion of medical safety in the context of LLMs, let alone how to evaluate and improve it. To address this gap, we first define the notion of medical safety in LLMs based on the Principles of Medical Ethics set forth by the American Medical Association. We then leverage this understanding to introduce MedSafetyBench, the first benchmark dataset designed to measure the medical safety of LLMs. We demonstrate the utility of MedSafetyBench by using it to evaluate and improve the medical safety of LLMs.
MedSafetyBench: Evaluating and Improving the Medical Safety of Large Language Models
Han, Tessa, Kumar, Aounon, Agarwal, Chirag, Lakkaraju, Himabindu
As large language models (LLMs) develop increasingly sophisticated capabilities and find applications in medical settings, it becomes important to assess their medical safety due to their far-reaching implications for personal and public health, patient safety, and human rights. However, there is little to no understanding of the notion of medical safety in the context of LLMs, let alone how to evaluate and improve it. To address this gap, we first define the notion of medical safety in LLMs based on the Principles of Medical Ethics set forth by the American Medical Association. We then leverage this understanding to introduce MedSafetyBench, the first benchmark dataset specifically designed to measure the medical safety of LLMs. We demonstrate the utility of MedSafetyBench by using it to evaluate and improve the medical safety of LLMs. Our results show that publicly-available medical LLMs do not meet standards of medical safety and that fine-tuning them using MedSafetyBench improves their medical safety. By introducing this new benchmark dataset, our work enables a systematic study of the state of medical safety in LLMs and motivates future work in this area, thereby mitigating the safety risks of LLMs in medicine.
- Europe > United Kingdom (0.14)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
Senior Data Scientist, Medical Safety at Johnson & Johnson in Fort Washington, Pennsylvania 19034 AnalyticTalent.com
Be a member of the Safety Science and Policy group within the Office of Consumer Medical Safety (OCMS). Be responsible for translating the strategic vision of safety science into solutions and insights through development of innovative methodology and applications. Should be passionate about working on cutting edge research and developing advanced analytics/informatics solutions in the field of safety analytics and surveillance. Lead the safety science effort to build applications and tools by applying advanced scientific algorithms and methods and translating the strategic vision of safety science into solutions and insights. Work closely with customers and stakeholders to turn data into critical information and knowledge that can be used to make evidence based decisions.