iScience (Dec 2023)

A deep learning-based semiautomated workflow for triaging follow-up MR scans in treated nasopharyngeal carcinoma

  • Ying-Ying Huang,
  • Yi-Shu Deng,
  • Yang Liu,
  • Meng-Yun Qiang,
  • Wen-Ze Qiu,
  • Wei-Xiong Xia,
  • Bing-Zhong Jing,
  • Chen-Yang Feng,
  • Hao-Hua Chen,
  • Xun Cao,
  • Jia-Yu Zhou,
  • Hao-Yang Huang,
  • Ze-Jiang Zhan,
  • Ying Deng,
  • Lin-Quan Tang,
  • Hai-Qiang Mai,
  • Ying Sun,
  • Chuan-Miao Xie,
  • Xiang Guo,
  • Liang-Ru Ke,
  • Xing Lv,
  • Chao-Feng Li

Journal volume & issue
Vol. 26, no. 12
p. 108347

Abstract

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Summary: It is imperative to optimally utilize virtues and obviate defects of fully automated analysis and expert knowledge in new paradigms of healthcare. We present a deep learning-based semiautomated workflow (RAINMAN) with 12,809 follow-up scans among 2,172 patients with treated nasopharyngeal carcinoma from three centers (ChiCTR.org.cn, Chi-CTR2200056595). A boost of diagnostic performance and reduced workload was observed in RAINMAN compared with the original manual interpretations (internal vs. external: sensitivity, 2.5% [p = 0.500] vs. 3.2% [p = 0.031]; specificity, 2.9% [p < 0.001] vs. 0.3% [p = 0.302]; workload reduction, 79.3% vs. 76.2%). The workflow also yielded a triaging performance of 83.6%, with increases of 1.5% in sensitivity (p = 1.000) and 0.6%–1.3% (all p < 0.05) in specificity compared to three radiologists in the reader study. The semiautomated workflow shows its unique superiority in reducing radiologist’s workload by eliminating negative scans while retaining the diagnostic performance of radiologists.

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