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Auteurs principaux: Zahidy, Misk Al, Maldonado, Kerly Guevara, Andrango, Luis Vilatuna, Proano, Ana Cristina, Claros, Ana Gabriela, Jimenez, Maria Lizarazo, Toro-Tobon, David, Montori, Victor M., Ponce-Ponte, Oscar J., Brito, Juan P.
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2509.16378
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author Zahidy, Misk Al
Maldonado, Kerly Guevara
Andrango, Luis Vilatuna
Proano, Ana Cristina
Claros, Ana Gabriela
Jimenez, Maria Lizarazo
Toro-Tobon, David
Montori, Victor M.
Ponce-Ponte, Oscar J.
Brito, Juan P.
author_facet Zahidy, Misk Al
Maldonado, Kerly Guevara
Andrango, Luis Vilatuna
Proano, Ana Cristina
Claros, Ana Gabriela
Jimenez, Maria Lizarazo
Toro-Tobon, David
Montori, Victor M.
Ponce-Ponte, Oscar J.
Brito, Juan P.
contents The promise of AI in medicine depends on learning from data that reflect what matters to patients and clinicians. Most existing models are trained on electronic health records (EHRs), which capture biological measures but rarely patient-clinician interactions. These relationships, central to care, unfold across voice, text, and video, yet remain absent from datasets. As a result, AI systems trained solely on EHRs risk perpetuating a narrow biomedical view of medicine and overlooking the lived exchanges that define clinical encounters. Our objective is to design, implement, and evaluate the feasibility of a longitudinal, multimodal system for capturing patient-clinician encounters, linking 360 degree video/audio recordings with surveys and EHR data to create a dataset for AI research. This single site study is in an academic outpatient endocrinology clinic at Mayo Clinic. Adult patients with in-person visits to participating clinicians are invited to enroll. Encounters are recorded with a 360 degree video camera. After each visit, patients complete a survey on empathy, satisfaction, pace, and treatment burden. Demographic and clinical data are extracted from the EHR. Feasibility is assessed using five endpoints: clinician consent, patient consent, recording success, survey completion, and data linkage across modalities. Recruitment began in January 2025. By August 2025, 35 of 36 eligible clinicians (97%) and 212 of 281 approached patients (75%) had consented. Of consented encounters, 162 (76%) had complete recordings and 204 (96%) completed the survey. This study aims to demonstrate the feasibility of a replicable framework for capturing the multimodal dynamics of patient-clinician encounters. By detailing workflows, endpoints, and ethical safeguards, it provides a template for longitudinal datasets and lays the foundation for AI models that incorporate the complexity of care.
format Preprint
id arxiv_https___arxiv_org_abs_2509_16378
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Longitudinal and Multimodal Recording System to Capture Real-World Patient-Clinician Conversations for AI and Encounter Research: Protocol
Zahidy, Misk Al
Maldonado, Kerly Guevara
Andrango, Luis Vilatuna
Proano, Ana Cristina
Claros, Ana Gabriela
Jimenez, Maria Lizarazo
Toro-Tobon, David
Montori, Victor M.
Ponce-Ponte, Oscar J.
Brito, Juan P.
Computers and Society
Computation and Language
The promise of AI in medicine depends on learning from data that reflect what matters to patients and clinicians. Most existing models are trained on electronic health records (EHRs), which capture biological measures but rarely patient-clinician interactions. These relationships, central to care, unfold across voice, text, and video, yet remain absent from datasets. As a result, AI systems trained solely on EHRs risk perpetuating a narrow biomedical view of medicine and overlooking the lived exchanges that define clinical encounters. Our objective is to design, implement, and evaluate the feasibility of a longitudinal, multimodal system for capturing patient-clinician encounters, linking 360 degree video/audio recordings with surveys and EHR data to create a dataset for AI research. This single site study is in an academic outpatient endocrinology clinic at Mayo Clinic. Adult patients with in-person visits to participating clinicians are invited to enroll. Encounters are recorded with a 360 degree video camera. After each visit, patients complete a survey on empathy, satisfaction, pace, and treatment burden. Demographic and clinical data are extracted from the EHR. Feasibility is assessed using five endpoints: clinician consent, patient consent, recording success, survey completion, and data linkage across modalities. Recruitment began in January 2025. By August 2025, 35 of 36 eligible clinicians (97%) and 212 of 281 approached patients (75%) had consented. Of consented encounters, 162 (76%) had complete recordings and 204 (96%) completed the survey. This study aims to demonstrate the feasibility of a replicable framework for capturing the multimodal dynamics of patient-clinician encounters. By detailing workflows, endpoints, and ethical safeguards, it provides a template for longitudinal datasets and lays the foundation for AI models that incorporate the complexity of care.
title Longitudinal and Multimodal Recording System to Capture Real-World Patient-Clinician Conversations for AI and Encounter Research: Protocol
topic Computers and Society
Computation and Language
url https://arxiv.org/abs/2509.16378