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Leveraging Eye Tracking to Prioritize Relevant Medical Record Data: Comparative Machine Learning Study

BACKGROUND: Electronic medical record (EMR) systems capture large amounts of data per patient and present that data to physicians with little prioritization. Without prioritization, physicians must mentally identify and collate relevant data, an activity that can lead to cognitive overload. To mitig...

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Autores principales: King, Andrew J, Cooper, Gregory F, Clermont, Gilles, Hochheiser, Harry, Hauskrecht, Milos, Sittig, Dean F, Visweswaran, Shyam
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7163414/
https://www.ncbi.nlm.nih.gov/pubmed/32238342
http://dx.doi.org/10.2196/15876
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author King, Andrew J
Cooper, Gregory F
Clermont, Gilles
Hochheiser, Harry
Hauskrecht, Milos
Sittig, Dean F
Visweswaran, Shyam
author_facet King, Andrew J
Cooper, Gregory F
Clermont, Gilles
Hochheiser, Harry
Hauskrecht, Milos
Sittig, Dean F
Visweswaran, Shyam
author_sort King, Andrew J
collection PubMed
description BACKGROUND: Electronic medical record (EMR) systems capture large amounts of data per patient and present that data to physicians with little prioritization. Without prioritization, physicians must mentally identify and collate relevant data, an activity that can lead to cognitive overload. To mitigate cognitive overload, a Learning EMR (LEMR) system prioritizes the display of relevant medical record data. Relevant data are those that are pertinent to a context—defined as the combination of the user, clinical task, and patient case. To determine which data are relevant in a specific context, a LEMR system uses supervised machine learning models of physician information-seeking behavior. Since obtaining information-seeking behavior data via manual annotation is slow and expensive, automatic methods for capturing such data are needed. OBJECTIVE: The goal of the research was to propose and evaluate eye tracking as a high-throughput method to automatically acquire physician information-seeking behavior useful for training models for a LEMR system. METHODS: Critical care medicine physicians reviewed intensive care unit patient cases in an EMR interface developed for the study. Participants manually identified patient data that were relevant in the context of a clinical task: preparing a patient summary to present at morning rounds. We used eye tracking to capture each physician’s gaze dwell time on each data item (eg, blood glucose measurements). Manual annotations and gaze dwell times were used to define target variables for developing supervised machine learning models of physician information-seeking behavior. We compared the performance of manual selection and gaze-derived models on an independent set of patient cases. RESULTS: A total of 68 pairs of manual selection and gaze-derived machine learning models were developed from training data and evaluated on an independent evaluation data set. A paired Wilcoxon signed-rank test showed similar performance of manual selection and gaze-derived models on area under the receiver operating characteristic curve (P=.40). CONCLUSIONS: We used eye tracking to automatically capture physician information-seeking behavior and used it to train models for a LEMR system. The models that were trained using eye tracking performed like models that were trained using manual annotations. These results support further development of eye tracking as a high-throughput method for training clinical decision support systems that prioritize the display of relevant medical record data.
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spelling pubmed-71634142020-04-28 Leveraging Eye Tracking to Prioritize Relevant Medical Record Data: Comparative Machine Learning Study King, Andrew J Cooper, Gregory F Clermont, Gilles Hochheiser, Harry Hauskrecht, Milos Sittig, Dean F Visweswaran, Shyam J Med Internet Res Original Paper BACKGROUND: Electronic medical record (EMR) systems capture large amounts of data per patient and present that data to physicians with little prioritization. Without prioritization, physicians must mentally identify and collate relevant data, an activity that can lead to cognitive overload. To mitigate cognitive overload, a Learning EMR (LEMR) system prioritizes the display of relevant medical record data. Relevant data are those that are pertinent to a context—defined as the combination of the user, clinical task, and patient case. To determine which data are relevant in a specific context, a LEMR system uses supervised machine learning models of physician information-seeking behavior. Since obtaining information-seeking behavior data via manual annotation is slow and expensive, automatic methods for capturing such data are needed. OBJECTIVE: The goal of the research was to propose and evaluate eye tracking as a high-throughput method to automatically acquire physician information-seeking behavior useful for training models for a LEMR system. METHODS: Critical care medicine physicians reviewed intensive care unit patient cases in an EMR interface developed for the study. Participants manually identified patient data that were relevant in the context of a clinical task: preparing a patient summary to present at morning rounds. We used eye tracking to capture each physician’s gaze dwell time on each data item (eg, blood glucose measurements). Manual annotations and gaze dwell times were used to define target variables for developing supervised machine learning models of physician information-seeking behavior. We compared the performance of manual selection and gaze-derived models on an independent set of patient cases. RESULTS: A total of 68 pairs of manual selection and gaze-derived machine learning models were developed from training data and evaluated on an independent evaluation data set. A paired Wilcoxon signed-rank test showed similar performance of manual selection and gaze-derived models on area under the receiver operating characteristic curve (P=.40). CONCLUSIONS: We used eye tracking to automatically capture physician information-seeking behavior and used it to train models for a LEMR system. The models that were trained using eye tracking performed like models that were trained using manual annotations. These results support further development of eye tracking as a high-throughput method for training clinical decision support systems that prioritize the display of relevant medical record data. JMIR Publications 2020-04-02 /pmc/articles/PMC7163414/ /pubmed/32238342 http://dx.doi.org/10.2196/15876 Text en ©Andrew J King, Gregory F Cooper, Gilles Clermont, Harry Hochheiser, Milos Hauskrecht, Dean F Sittig, Shyam Visweswaran. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 02.04.2020. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on http://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
King, Andrew J
Cooper, Gregory F
Clermont, Gilles
Hochheiser, Harry
Hauskrecht, Milos
Sittig, Dean F
Visweswaran, Shyam
Leveraging Eye Tracking to Prioritize Relevant Medical Record Data: Comparative Machine Learning Study
title Leveraging Eye Tracking to Prioritize Relevant Medical Record Data: Comparative Machine Learning Study
title_full Leveraging Eye Tracking to Prioritize Relevant Medical Record Data: Comparative Machine Learning Study
title_fullStr Leveraging Eye Tracking to Prioritize Relevant Medical Record Data: Comparative Machine Learning Study
title_full_unstemmed Leveraging Eye Tracking to Prioritize Relevant Medical Record Data: Comparative Machine Learning Study
title_short Leveraging Eye Tracking to Prioritize Relevant Medical Record Data: Comparative Machine Learning Study
title_sort leveraging eye tracking to prioritize relevant medical record data: comparative machine learning study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7163414/
https://www.ncbi.nlm.nih.gov/pubmed/32238342
http://dx.doi.org/10.2196/15876
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