4.5 Article

Nomogram model based on radiomics signatures and age to assist in the diagnosis of knee osteoarthritis

Journal

EXPERIMENTAL GERONTOLOGY
Volume 171, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.exger.2022.112031

Keywords

Age-related diseases; Knee osteoarthritis; Radiomics; Binary classification; Plain radiographs; Nomogram

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A nomogram model combining radiomics signatures with age was developed and evaluated for the accurate diagnosis of knee osteoarthritis (KOA). Logistic regression model showed the best classification performance among the four radiomics models. Although statistically insignificant, the nomogram model performed better than the radiomics model in testing cohort.
Background: Knee osteoarthritis (KOA) is a common disease in the elderly. An effective method for accurate diagnosis could affect the management and prognosis of patients. Objectives: To develop a nomogram model based on X-ray imaging data and age, and to evaluate its effectiveness in the diagnosis of KOA. Methods: A total of 4403 knee X-rays from 1174 patients (July 2017 to November 2018) were retrospectively analyzed. Radiomics features were extracted and selected from the X-ray image data to quantify the phenotypic characteristics of the lesion region. Feature selection was performed in three steps to enable the derivation of robust and effective radiomics signatures. Then, logistic regression (LR), support vector machine (SVM) Ada-Boost, gradient boosting decision tree (GBDT), and multi-layer perceptron (MLP) was adopted to verify the performance of radiomics signatures. In addition, a nomogram model combining age with radiomics signatures was constructed. At last, receiver operating characteristic (ROC) curve, calibration and decision curves were used to evaluate the discriminative performance. Results: The LR model has the best classification performance among the four radiomics models in testing cohort (LR AUC vs. SVM AUC: 0.843 vs. 0.818, DeLong test P = 0.0024; LR AUC vs. GBDT AUC: 0.843 vs. 0.821, P = 0.0028; LR AUC vs. MLP AUC: 0.843 vs. 0.822, P = 0.0019). The nomogram model achieved better predictive efficacy than the radiomics model in testing cohort compared to radiomics models although the statistical dif-ference was not significant (Nomogram AUC vs. Radiomics AUC: 0.847 vs. 0.843, P = 0.06). The decision curve analysis revealed that the constructed nomogram had clinical usefulness. Conclusion: The nomogram model combining radiomics signatures with age has good performance for the ac-curate diagnosis of KOA and may help to improve clinical decision-making.

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