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ORIGINAL RESEARCH article

Front. Oncol.

Sec. Gastrointestinal Cancers: Colorectal Cancer

This article is part of the Research TopicAI-Driven Early Diagnosis and Risk Prediction in Early-Onset Colorectal CancerView all articles

Identification of KRAS Mutation in Rectal Cancer Based on a 2.5D Deep Learning Model

Provisionally accepted
Chengmeng  ZhangChengmeng Zhang1Jinge  LiJinge Li2peng  Chenpeng Chen1Yanyan  ZhouYanyan Zhou3Jian  ShenJian Shen1,2*Guanfeng  ChenGuanfeng Chen4*
  • 1Radiology Department of Huzhou Central Hospital, Fifth School of Clinical Medicine of Zhejiang Chinese Medical University, Huzhou, China
  • 2Medical School of Huzhou University, Huzhou, China
  • 3Radiology Department of Changxing County Traditional Chinese Medicine Hospital, Huzhou, China
  • 4Radiology Department of Quanzhou First Hospital Affliated to Fujian Medical University, Quanzhou, China

The final, formatted version of the article will be published soon.

Objective: To explore the utility of a 2.5D deep transfer learning (DTL) model for distinguishing between Kirsten rat sarcoma viral oncogene (KRAS) mutant and wild-type phenotypes in patients with rectal cancer (RC). Methods: We retrospectively analyzed 138 patients with pathologically confirmed RC who underwent next-generation sequencing to detect KRAS mutations. Among these, 43 KRAS mutant and 95 wild-type cases were enrolled and divided randomly into a training set (30 mutant, 66 wild-type) and a validation set (13 mutant, 29 wild-type) in a 7:3 ratio. Tumor regions of interest (ROIs) were delineated manually slice-by-slice in thin-section arterial-phase computed tomography images. DTL and radiomic features were extracted from ROIs using 2.5D deep learning and traditional radiomic approaches, respectively. After feature-dimensionality reduction and selection, six machine learning models were employed to construct radiomic models and 2.5D deep learning models. The diagnostic performance of each model was evaluated using the area under the receiver operating characteristic curve (AUC). Results: After feature selection, 10 radiomic features and 17 DTL features were included for model construction. The AUCs for the radiomic models ranged from 0.808–0.988 in the training set and 0.521–0.672 in the validation set, with the XGBoost classifier achieving the optimal performance (AUC=0.672) in the validation set. The AUCs for the 2.5D deep learning models ranged from 0.950–1.000 in the training set and 0.788–0.913 in the validation set, with the support vector machine classifier demonstrating the best diagnostic efficacy (AUC=0.913) in the validation set. 2 Conclusion: A 2.5D deep learning model can effectively distinguish between KRAS mutant and KRAS wild-type RC, outperforming traditional radiomic models. It provides a novel non-invasive approach for the preoperative assessment of KRAS mutation status.

Keywords: deep transfer learning, gene mutation, Radiomics, rectal cancer, X-ray computed tomography

Received: 09 Dec 2025; Accepted: 06 Feb 2026.

Copyright: © 2026 Zhang, Li, Chen, Zhou, Shen and Chen. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

* Correspondence:
Jian Shen
Guanfeng Chen

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