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Stanford Aging and Ethnogeriatrics Research Center (SAGE Center)

Stanford Aging and Ethnogeriatrics Research Center (SAGE Center)

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2022 – 2023 Awardees

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Shoa Clarke
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2021 – 2022 Awardees

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Jonathan H. Chen
Monroe D. Kennedy III
Morteza Noshad
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Jiajun Wu
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2020 – 2021 Awardees

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Kevin Alexander
Róbert Pálovics
Travis Shivley-Scott
Juan M. Banda

2019 – 2020 Awardees

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Ivan Guevara
Fatima Rodriguez
Carolyn Rodriguez
Alesha Heath
Monique Cano
Suzanne Tamang
Kacie Deters

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    Next-Generation Artificial Intelligence for Diagnosis: From Predicting Diagnostic Labels to "Wayfinding"

    Julia Adler-Milstein, PhD1; Jonathan H. Chen, MD, PhD; Gurpreet Dhaliwal, MD

    Improving the diagnostic process is a quality and safety priority.With the digitization of health records and rapid expansion of health data, the cognitive demand on the diagnostician has increased. The use of artificial intelligence (AI) to assist human cognition has the potential to reduce this demand and associated diagnostic errors. However, current AI tools have not realized this potential, due in part to the long-standing focus of these tools on predicting final diagnostic labels instead of helping clinicians navigate the dynamic refinement process of diagnosis. This Viewpoint highlights the importance of shifting the role of diagnostic AI from predicting labels to “wayfinding” (interpreting context and providing cues that guide the diagnostician).