A Concept-based Interpretable Model for the Diagnosis of Choroid Neoplasias using Multimodal Data
Yifan Wu, Yang Liu, Yue Yang, Michael S. Yao, Wenli Yang, Xuehui Shi,, Lihong Yang, Dongjun Li, Yueming Liu, James C. Gee, Xuan Yang, Wenbin Wei,, Shi Gu

TL;DR
This paper presents a concept-based interpretable machine learning model for diagnosing choroid neoplasias, utilizing multimodal data to achieve high accuracy and significantly improve junior doctors' diagnostic performance.
Contribution
The study introduces the largest dataset for choroid neoplasias and develops an interpretable model that rivals black-box methods and enhances clinician accuracy.
Findings
Achieved an F1 score of 0.91 with the model.
Boosted junior doctors' diagnostic accuracy by 42%.
Utilized multimodal data from 750 patients over 18 years.
Abstract
Diagnosing rare diseases presents a common challenge in clinical practice, necessitating the expertise of specialists for accurate identification. The advent of machine learning offers a promising solution, while the development of such technologies is hindered by the scarcity of data on rare conditions and the demand for models that are both interpretable and trustworthy in a clinical context. Interpretable AI, with its capacity for human-readable outputs, can facilitate validation by clinicians and contribute to medical education. In the current work, we focus on choroid neoplasias, the most prevalent form of eye cancer in adults, albeit rare with 5.1 per million. We built the so-far largest dataset consisting of 750 patients, incorporating three distinct imaging modalities collected from 2004 to 2022. Our work introduces a concept-based interpretable model that distinguishes between…
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Taxonomy
TopicsBiomedical Text Mining and Ontologies
MethodsFocus
