Machine learning models for predicting dysphonia following anterior cervical discectomy and fusion: a Swedish Registry Study.

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Tác giả: Ali Buwaider, Erik Edström, Victor Gabriel El-Hajj, Adrian Elmi-Terander, Paul Gerdhem, Anna MacDowall, Victor E Staartjes

Ngôn ngữ: eng

Ký hiệu phân loại: 006.31 Machine learning

Thông tin xuất bản: United States : The spine journal : official journal of the North American Spine Society , 2025

Mô tả vật lý:

Bộ sưu tập: NCBI

ID: 89514

BACKGROUND: Dysphonia is one of the more common complications following anterior cervical discectomy and fusion (ACDF). ACDF is the gold standard for treating degenerative cervical spine disorders, and identifying high-risk patients is therefore crucial. PURPOSE: This study aimed to evaluate different machine learning models to predict persistent dysphonia after ACDF. STUDY DESIGN: A retrospective review of the nationwide Swedish spine registry (Swespine). PATIENT SAMPLE: All adults in the Swespine registry who underwent elective ACDF between 2006 and 2020. OUTCOME MEASURES: The primary outcome was self-reported dysphonia lasting at least 1 month after surgery. Predictive performance was assessed using discrimination and calibration metrics. METHODS: Patients with missing dysphonia data at the 1-year follow-up were excluded. Data preprocessing involved one-hot encoding categorical variables, scaling continuous variables, and imputing missing values. Four machine learning models (logistic regression, random forest (RF), gradient boosting, K-nearest neighbor) were employed. The models were trained and tested using an 80:20 data split and 5-fold cross-validation, with performance metrics guiding the selection of the best model for predicting persistent dysphonia. RESULTS: In total, 2,708 were included in the study. Twelve key predictors were identified. Four machine learning models were tested, with the RF model achieving the best performance (AUC=0.794). The most significant predictors across models included preoperative NDI, EQ5D CONCLUSIONS: In this study, machine learning models were employed to identify predictors of persistent dysphonia following ACDF. Among the models tested, the RF classifier demonstrated superior performance, with an AUC value of 0.790. The RF model identified NDI, EQ5D
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