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Accepted for/Published in: JMIR Cancer

Date Submitted: Nov 22, 2024
Date Accepted: Jun 30, 2025

The final, peer-reviewed published version of this preprint can be found here:

Machine Learning for Preoperative Assessment and Postoperative Prediction in Cervical Cancer: Multicenter Retrospective Model Integrating MRI and Clinicopathological Data

Li S, Guo C, Fang Y, Qiu J, Zhang H, Ling L, Xu J, Peng X, Jiang C, Wang J, Hua K

Machine Learning for Preoperative Assessment and Postoperative Prediction in Cervical Cancer: Multicenter Retrospective Model Integrating MRI and Clinicopathological Data

JMIR Cancer 2025;11:e69057

DOI: 10.2196/69057

PMID: 40939065

PMCID: 12431160

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

A Novel Integrated Machine Learning Model for Preoperative Evaluation and Postoperative Prognosis-prediction in Cervical Cancer Based on Clinical-pathological Parameters and MR Radiomics

  • Shuqi Li; 
  • Chenyan Guo; 
  • Yufei Fang; 
  • Junjun Qiu; 
  • He Zhang; 
  • Lei Ling; 
  • Jie Xu; 
  • Xinwei Peng; 
  • Chuchu Jiang; 
  • Jue Wang; 
  • Keqin Hua

ABSTRACT

Background:

Machine learning (ML) has been gradually applied to cervical cancer research, but rarely combines both clinical parameters and image data. Meanwhile, more robust and accurate preoperative assessment of parametrial invasion and lymph node metastasis, as well as postoperative prognosis prediction are also in urgent need.

Objective:

We aimed to develop an integrated ML model that integrates clinicopathological parameters as well as MR images and includes both pre- and post-operation evaluation in cervical cancer (CC) patients.

Methods:

Data of CC patients from 2014 to 2022 in two tertiary hospitals were retrospectively collected and an exempt was granted by the Ethics Committee for this purpose. Variables were analyzed for their predictive value of parametrial invasion, lymph node metastasis, survival and recurrence using 7 ML models. The predictive performance of all 7 ML models was compared and an AI-assisted contouring and prognosis prediction system is developed based on optimal machine learning algorithms.

Results:

This study included 250 women for analysis (11 deaths, 24 recurrences): (1) In terms of evaluation of both parametrial invasions and lymph node metastasis, integrated ML models with weighted KNN outperformed other ML models, especially in the case of sensitivity. (2) An integrated model using weighted KNN achieved optimal performance in predicting recurrence and survival times for postoperative CC patients, showing high accuracy and balanced sensitivity. (3) an AI-assisted contouring and prognosis prediction system was developed that assists in lesion identification, preoperative evaluation and postoperative prognosis prediction.

Conclusions:

The integration of clinical data and MR image through ML models offers superior preoperative diagnostic and postoperative prognostic prediction capabilities, potentially reducing clinical errors and enabling tailored, precise treatment strategies.


 Citation

Please cite as:

Li S, Guo C, Fang Y, Qiu J, Zhang H, Ling L, Xu J, Peng X, Jiang C, Wang J, Hua K

Machine Learning for Preoperative Assessment and Postoperative Prediction in Cervical Cancer: Multicenter Retrospective Model Integrating MRI and Clinicopathological Data

JMIR Cancer 2025;11:e69057

DOI: 10.2196/69057

PMID: 40939065

PMCID: 12431160

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