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Jason Fries | Stanford HAI

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peopleFaculty

Jason Fries

Research Engineer, Stanford University | HAI Faculty Affiliate, Stanford HAI

External Bio

Jason Fries' research focuses on training and evaluating foundation models for healthcare, positioned at the intersection of computer science, medical informatics, and hospital systems. His work explores the use of electronic health record (EHR) data to contextualize human health, leveraging longitudinal patient information to inform model development and evaluation. His research has been published in venues such as NeurIPS, ICLR, AAAI, Nature Communications, and npj Digital Medicine.

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Latest Related to Jason Fries

Research
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A Multi-Center Study on the Adaptability of a Shared Foundation Model for Electronic Health Records

Lin Lawrence Guo, Jason Fries, Nigam Shah, Ethan Steinberg, Scott Lanyon Fleming, Keith Morse, Catherine Aandilian, Jose Posada, Lillian Sung
Natural Language ProcessingHealthcareFoundation ModelsJun 27

Foundation models are transforming artificial intelligence (AI) in healthcare by providing modular components adaptable for various downstream tasks, making AI development more scalable and cost-effective. Foundation models for structured electronic health records (EHR), trained on coded medical records from millions of patients, demonstrated benefits including increased performance with fewer training labels, and improved robustness to distribution shifts. However, questions remain on the feasibility of sharing these models across hospitals and their performance in local tasks. This multi-center study examined the adaptability of a publicly accessible structured EHR foundation model (FMSM), trained on 2.57 M patient records from Stanford Medicine. Experiments used EHR data from The Hospital for Sick Children (SickKids) and Medical Information Mart for Intensive Care (MIMIC-IV). We assessed both adaptability via continued pretraining on local data, and task adaptability compared to baselines of locally training models from scratch, including a local foundation model. Evaluations on 8 clinical prediction tasks showed that adapting the off-the-shelf FMSMmatched the performance of gradient boosting machines (GBM) locally trained on all data while providing a 13% improvement in settings with few task-specific training labels. Continued pretraining on local data showed FMSM required fewer than 1% of training examples to match the fully trained GBM’s performance, and was 60 to 90% more sample-efficient than training local foundation models from scratch. Our findings demonstrate that adapting EHR foundation models across hospitals provides improved prediction performance at less cost, underscoring the utility of base foundation models as modular components to streamline the development of healthcare AI.

news

Large Language Models in Healthcare: Are We There Yet?

Michael Wornow, Jason Fries, Nigam ShahJenelle Jindal, Suhana Bedi, Akshay Swaminathan, Akash Chaurasia
May 08

While these tools show potential in clinical practice, we urgently need a systematic approach to evaluation.

news

The Shaky Foundations of Foundation Models in Healthcare

Michael Wornow, Scott Fleming, Jason Fries, Nigam Shah
HealthcareMachine LearningFeb 27

Scholars detail the current state of large language models in healthcare and advocate for better evaluation frameworks.

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How Foundation Models Can Advance AI in Healthcare
Jason Fries, Scott Fleming, Michael Wornow, Nigam Shah
Ethan Steinberg, Yizhe Xu, Keith Morse, Dev Dash
Dec 15, 2022
news

This new class of models may lead to more affordable, easily adaptable health AI.

How Foundation Models Can Advance AI in Healthcare

Jason Fries, Scott Fleming, Michael Wornow, Nigam Shah
Ethan Steinberg, Yizhe Xu, Keith Morse, Dev Dash
Dec 15, 2022

This new class of models may lead to more affordable, easily adaptable health AI.

Healthcare
news
Assessing the accuracy of automatic speech recognition for psychotherapy
Adam Miner, Albert Haque, Jason Fries, Scott Fleming, Denise Wilfley, Terence Wilson, Arnold Milstein, Dan Jurafsky, Bruce Arnow, Stewart Agras, Fei-Fei Li, Nigam Shah
Dec 28, 2020
Research

Accurate transcription of audio recordings in psychotherapy would improve therapy effectiveness, clinician training, and safety monitoring. Although automatic speech recognition software is commercially available, its accuracy in mental health settings has not been well described. It is unclear which metrics and thresholds are appropriate for different clinical use cases, which may range from population descriptions to individual safety monitoring.

Assessing the accuracy of automatic speech recognition for psychotherapy

Adam Miner, Albert Haque, Jason Fries, Scott Fleming, Denise Wilfley, Terence Wilson, Arnold Milstein, Dan Jurafsky, Bruce Arnow, Stewart Agras, Fei-Fei Li, Nigam Shah
Dec 28, 2020

Accurate transcription of audio recordings in psychotherapy would improve therapy effectiveness, clinician training, and safety monitoring. Although automatic speech recognition software is commercially available, its accuracy in mental health settings has not been well described. It is unclear which metrics and thresholds are appropriate for different clinical use cases, which may range from population descriptions to individual safety monitoring.

Research