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Related Experiment Video

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Introduction of an Integrated Pathology Image Management, Artificial Intelligence, and Reporting System
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Computer-assisted quantitative framework for whole slide cervical image grading driven by time series features.

Chuanwang Zhang1,2, Dongyao Jia3, Zhiyong Wang1,2

  • 1China Nuclear Power Engineering Co., Ltd., Beijing, 100840, China.

Scientific Reports
|October 13, 2025
PubMed
Summary

This study presents a novel AI framework for cervical cancer diagnosis using whole slide images, improving cell classification and detection robustness for better lesion grading.

Keywords:
Cervical cancer analysisCytologyDigital pathologyWhole slide images

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Area of Science:

  • Computational pathology
  • Artificial intelligence in oncology
  • Medical image analysis

Background:

  • Current ThinPrep cytologic tests for cervical cancer diagnosis rely on manual screening, which can be subjective and lack robustness.
  • There is a need for more objective and accurate methods to aid pathologists in grading cervical lesions.

Purpose of the Study:

  • To introduce a two-stage quantitative detection framework for whole slide cervical images to assist pathologists in lesion grading.
  • To enhance the precision and robustness of cervical cell classification and detection.

Main Methods:

  • Utilized a You Only Look Once (YOLO) network with an attention module and multi-scale feature fusion for cell classification.
  • Incorporated quantitative DNA description and the Matthew effect for refined diagnostic contributions and cell proliferation assessment.
  • Extracted time series features and global smear information for enhanced detection robustness and resistance to false classifications.

Main Results:

  • Achieved high cervical cell classification precision (0.8647) and true positive rate (95.8%).
  • Demonstrated smear-level accuracy, sensitivity, and specificity of 0.9193, 0.9285, and 0.9234, respectively.
  • Attained grading accuracy comparable to professional pathologists for cervical intraepithelial neoplasia assessment.

Conclusions:

  • The proposed AI framework significantly improves cervical cancer detection and grading accuracy.
  • Time series features are crucial for cervical cancer detection, correlating with patient physiological states.
  • The model can be seamlessly integrated into existing diagnostic systems, enhancing screening efficiency and robustness.