An interpretable machine learning model combining MRI-DKI habitat radiomic features and clinical biomarkers for noninvasive prediction of lymphatic metastasis in rectal cancer: a prospective study
Leping Peng, Feixiang Li, Fan Zhang, Fang Ma, Xiuling Zhang, Xiaoyue Zhang, Dongdong Chen, Gang Huang, Lili Wang

TL;DR
This study developed a machine learning model combining MRI-based features and clinical biomarkers to predict lymphatic metastasis in rectal cancer, improving risk assessment for better treatment decisions.
Contribution
The study introduces a novel combined model using DKI-based habitat radiomic features and clinical immune-inflammatory biomarkers for noninvasive prediction of lymphatic metastasis in rectal cancer.
Findings
Model 3 achieved AUCs of 0.937 for LVI and 0.947 for LNM in the testing cohort.
Habitat radiomics score is a novel and robust quantitative biomarker for rectal cancer.
The combined model outperformed other models in predicting lymphatic metastasis risk.
Abstract
Tumor heterogeneity exerts a significant influence on lymphovascular invasion (LVI) and lymph node metastasis (LNM) in rectal cancer (RC), thereby affecting patient treatment outcomes and prognosis. This study aims to develop a combined model integrating diffusion kurtosis imaging (DKI) based habitat radiomic features with clinical immune-inflammatory biomarkers to predict lymphatic metastatic risk in RC. This prospective study included 151 pathologically confirmed patients with rectal adenocarcinoma who underwent preoperative MRI (training cohort: 105 cases; testing cohort: 46 cases). Two radiologists manually delineated the whole-tumor VOI slice by slice on the mean diffusivity (MD) maps using ITK-SNAP software, and the VOIs were subsequently mapped onto the mean kurtosis (MK) maps. K-means clustering was applied for subregion segmentation. Predictive models for LVI and LNM were…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Colorectal Cancer Surgical Treatments · MRI in cancer diagnosis
