Knowledge-driven AI-generated data for accurate and interpretable breast ultrasound diagnoses

Data-driven deep learning models have shown great capabilities to assist radiologists in breast ultrasound (US) diagnoses. However, their effectiveness is limited by the long-tail distribution of training data, which leads to inaccuracies in rare cases. In this study, we address a long-standing chal...

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Veröffentlicht in:arXiv.org 2024-07
Hauptverfasser: Yu, Haojun, Li, Youcheng, Zhang, Nan, Niu, Zihan, Gong, Xuantong, Luo, Yanwen, Wu, Quanlin, Qin, Wangyan, Zhou, Mengyuan, Han, Jie, Jia Tao, Zhao, Ziwei, Dai, Di, He, Di, Wang, Dong, Tang, Binghui, Huo, Ling, Zhu, Qingli, Wang, Yong, Wang, Liwei
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Sprache:eng
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Zusammenfassung:Data-driven deep learning models have shown great capabilities to assist radiologists in breast ultrasound (US) diagnoses. However, their effectiveness is limited by the long-tail distribution of training data, which leads to inaccuracies in rare cases. In this study, we address a long-standing challenge of improving the diagnostic model performance on rare cases using long-tailed data. Specifically, we introduce a pipeline, TAILOR, that builds a knowledge-driven generative model to produce tailored synthetic data. The generative model, using 3,749 lesions as source data, can generate millions of breast-US images, especially for error-prone rare cases. The generated data can be further used to build a diagnostic model for accurate and interpretable diagnoses. In the prospective external evaluation, our diagnostic model outperforms the average performance of nine radiologists by 33.5% in specificity with the same sensitivity, improving their performance by providing predictions with an interpretable decision-making process. Moreover, on ductal carcinoma in situ (DCIS), our diagnostic model outperforms all radiologists by a large margin, with only 34 DCIS lesions in the source data. We believe that TAILOR can potentially be extended to various diseases and imaging modalities.
ISSN:2331-8422