Using combinations of both clinical and radiographic parameters to develop a diagnostic prediction model demonstrated an excellent performance in early detection of patients with blount’s disease

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Abstract

Early identification of pathological causes for pediatric genu varum (bowlegs) is crucial for preventing a progressive, irreversible knee deformity of the child. This study aims to develop and validate a diagnostic clinical prediction algorithm for assisting physicians in distinguishing an early stage of Blount’s disease from the physiologic bowlegs to provide an early treatment that could prevent the progressive, irreversible deformity. The diagnostic prediction model for differentiating an early stage of Blount’s disease from the physiologic bowlegs was developed under a retrospective case-control study from 2000 to 2017. Stepwise backward elimination of multivariable logistic regression modeling was used to derive a diagnostic model. A total of 158 limbs from 79 patients were included. Of those, 84 limbs (53.2%) were diagnosed as Blount’s disease. The final model that included age, BMI, MDA, and MMB showed excellent performance (area under the receiver operating characteristic (AuROC) curve: 0.85, 95% confidence interval 0.79 to 0.91) with good calibration. The proposed diagnostic prediction model for discriminating an early stage of Blount’s disease from physiologic bowlegs showed high discriminative ability with minimal optimism.

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Adulkasem, N., Wongcharoenwatana, J., Ariyawatkul, T., Chotigavanichaya, C., Kaewpornsawan, K., & Eamsobhana, P. (2021). Using combinations of both clinical and radiographic parameters to develop a diagnostic prediction model demonstrated an excellent performance in early detection of patients with blount’s disease. Children, 8(10). https://doi.org/10.3390/children8100890

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