This retrospective dual-center study from two Chinese hospitals (Xuzhou Central Hospital and Xuzhou First People's Hospital) developed a CT-based radiomics model using a K-nearest neighbors (KNN) algorithm to predict pain relief after palliative radiotherapy in patients with bone metastases. The study included 134 patients, with 53 achieving pain relief (complete or partial response) and 81 not. The model's performance, measured by area under the curve (AUC), was 0.823 in the training set, 0.812 in the internal validation set, and 0.818 in the external test set. Confidence intervals were wide, especially for the external test set (95% CI: 0.556–1.000), reflecting the small sample size (n=17).
The authors acknowledge several limitations: the retrospective design, small external test set, and potential selection bias. The study does not report adverse events, follow-up duration, or comparator treatments. As a retrospective analysis, it can only demonstrate association, not causation. The certainty of the evidence is low.
Despite these limitations, the model may offer a noninvasive tool to identify patients likely to benefit from radiotherapy, potentially guiding treatment decisions. However, the authors caution against clinical use without prospective validation. The findings are not generalizable beyond the study population without further research.
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PurposeThis study aimed to develop and validate a CT-based radiomics model for predicting pain relief after palliative radiotherapy in patients with bone metastases, and to compare the performance of 11 machine learning algorithms.MethodsWe retrospectively enrolled patients with bone metastases who received palliative radiotherapy at Xuzhou Central Hospital (Center 1) and Xuzhou First People’s Hospital (Center 2) between January 2022 and December 2024. All patients completed a prescribed dose of 40 Gy in 20 fractions or 30 Gy in 10 fractions. Clinical variables—including age, sex, primary tumor type, pattern of bone destruction, and metastatic site—were collected alongside CT images. Pain response was assessed per the International Consensus on Endpoints for Palliative Radiotherapy in Bone Metastases: complete response (CR) and partial response (PR) were grouped as the relief group, while progressive disease (PD) and stable disease (SD) constituted the non-relief group. ROIs were delineated over the tumor areas on bone-window CT images, and radiomic features were extracted, normalized, and screened to construct a radiomics signature. Eleven machine learning classifiers were trained and compared; the optimal model was selected for predictive performance evaluation and clinical applicability analysis.ResultsA total of 134 eligible patients were included (pain relief group: n = 53; non-relief group: n = 81). Center 1 patients were randomly split approximately 8:2 into training (n = 91) and internal validation (n = 26) sets; Center 2 served as the external test set (n = 17). No significant differences existed between the two centers in baseline demographics, tumor-related variables, or treatment parameters, except for bone-protective drug use and bone metastasis site. After feature selection, 7 radiomic features remained for modeling. Among 11 tested machine learning models, the k-nearest neighbors (KNN) model demonstrated the best performance: area under the receiver operating characteristic curve (AUC) was 0.823 (95% confidence interval (CI): 0.743–0.903) in the training set, 0.812 (95% CI: 0.661–0.964) in the internal validation set, and 0.818 (95% CI: 0.556–1.000) in the external test set. Decision curve analysis (DCA) indicated favorable net clinical benefit.ConclusionThe KNN model based on CT radiomics can effectively predict pain relief outcomes after palliative radiotherapy in patients with bone metastases, showing potential clinical utility, and may help identify patients likely to achieve pain relief from radiotherapy.