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Human-centric Metric for Accelerating Pathology Reports Annotation

31 October 2019
Ruibin Ma
Po-Hsuan Cameron Chen
Gang Li
W. Weng
Angela Lin
Krishna Gadepalli
Yuannan Cai
ArXiv (abs)PDFHTML
Abstract

Pathology reports contain useful information such as the main involved organ, diagnosis, etc. These information can be identified from the free text reports and used for large-scale statistical analysis or serve as annotation for other modalities such as pathology slides images. However, manual classification for a huge number of reports on multiple tasks is labor-intensive. In this paper, we have developed an automatic text classifier based on BERT and we propose a human-centric metric to evaluate the model. According to the model confidence, we identify low-confidence cases that require further expert annotation and high-confidence cases that are automatically classified. We report the percentage of low-confidence cases and the performance of automatically classified cases. On the high-confidence cases, the model achieves classification accuracy comparable to pathologists. This leads a potential of reducing 80% to 98% of the manual annotation workload.

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