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Autores principales: Thai, Veronica, Li, Rui, Ling, Meng, Jiang, Shuning, Wolfe, Jeremy, Machiraju, Raghu, Hu, Yan, Li, Zaibo, Parwani, Anil, Chen, Jian
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2510.24653
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author Thai, Veronica
Li, Rui
Ling, Meng
Jiang, Shuning
Wolfe, Jeremy
Machiraju, Raghu
Hu, Yan
Li, Zaibo
Parwani, Anil
Chen, Jian
author_facet Thai, Veronica
Li, Rui
Ling, Meng
Jiang, Shuning
Wolfe, Jeremy
Machiraju, Raghu
Hu, Yan
Li, Zaibo
Parwani, Anil
Chen, Jian
contents Interpretation of giga-pixel whole-slide images (WSIs) is an important but difficult task for pathologists. Their diagnostic accuracy is estimated to average around 70%. Adding a second pathologist does not substantially improve decision consistency. The field lacks adequate behavioral data to explain diagnostic errors and inconsistencies. To fill in this gap, we present PathoGaze1.0, a comprehensive behavioral dataset capturing the dynamic visual search and decision-making processes of the full diagnostic workflow during cancer diagnosis. The dataset comprises 18.69 hours of eye-tracking, mouse interaction, stimulus tracking, viewport navigation, and diagnostic decision data (EMSVD) collected from 19 pathologists interpreting 397 WSIs. The data collection process emphasizes ecological validity through an application-grounded testbed, called PTAH. In total, we recorded 171,909 fixations, 263,320 saccades, and 1,867,362 mouse interaction events. In addition, such data could also be used to improve the training of both pathologists and AI systems that might support human experts. All experiments were preregistered at https://osf.io/hj9a7, and the complete dataset along with analysis code is available at https://go.osu.edu/pathogaze.
format Preprint
id arxiv_https___arxiv_org_abs_2510_24653
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Eye-Tracking, Mouse Tracking, Stimulus Tracking,and Decision-Making Datasets in Digital Pathology
Thai, Veronica
Li, Rui
Ling, Meng
Jiang, Shuning
Wolfe, Jeremy
Machiraju, Raghu
Hu, Yan
Li, Zaibo
Parwani, Anil
Chen, Jian
Computer Vision and Pattern Recognition
Human-Computer Interaction
J.3
Interpretation of giga-pixel whole-slide images (WSIs) is an important but difficult task for pathologists. Their diagnostic accuracy is estimated to average around 70%. Adding a second pathologist does not substantially improve decision consistency. The field lacks adequate behavioral data to explain diagnostic errors and inconsistencies. To fill in this gap, we present PathoGaze1.0, a comprehensive behavioral dataset capturing the dynamic visual search and decision-making processes of the full diagnostic workflow during cancer diagnosis. The dataset comprises 18.69 hours of eye-tracking, mouse interaction, stimulus tracking, viewport navigation, and diagnostic decision data (EMSVD) collected from 19 pathologists interpreting 397 WSIs. The data collection process emphasizes ecological validity through an application-grounded testbed, called PTAH. In total, we recorded 171,909 fixations, 263,320 saccades, and 1,867,362 mouse interaction events. In addition, such data could also be used to improve the training of both pathologists and AI systems that might support human experts. All experiments were preregistered at https://osf.io/hj9a7, and the complete dataset along with analysis code is available at https://go.osu.edu/pathogaze.
title Eye-Tracking, Mouse Tracking, Stimulus Tracking,and Decision-Making Datasets in Digital Pathology
topic Computer Vision and Pattern Recognition
Human-Computer Interaction
J.3
url https://arxiv.org/abs/2510.24653