Classification of Oncology Treatment Responses from French Radiology Reports with Supervised Machine Learning

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Abstract

The present study shows first attempts to automatically classify oncology treatment responses on the basis of the textual conclusion sections of radiology reports according to the RECIST classification. After a robust and extended manual annotation of 543 conclusion sections (5-to-50-word long), and after the training of several machine learning techniques (from traditional machine learning to deep learning), the best results show an accuracy score of 0.90 for a two-class classification (non-progressive vs. progressive disease) and of 0.82 for a four-class classification (complete response, partial response, stable disease, progressive disease) both with Logistic Regression approach. Some innovative solutions are further suggested to improve these scores in the future.

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APA

Goldman, J. P., Mottin, L., Zaghir, J., Keszthelyi, D., Lokaj, B., Turbé, H., … Lovis, C. (2022). Classification of Oncology Treatment Responses from French Radiology Reports with Supervised Machine Learning. In Studies in Health Technology and Informatics (Vol. 294, pp. 849–853). IOS Press BV. https://doi.org/10.3233/SHTI220605

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