Statistical models versus machine learning approach for competing risks in proctological surgery

被引:0
作者
Romano, Lucia [1 ]
Manno, Andrea [2 ,3 ]
Rossi, Fabrizio [2 ]
Masedu, Francesco [1 ]
Attanasio, Margherita [1 ]
Vistoli, Fabio [1 ]
Giuliani, Antonio [1 ]
机构
[1] Univ Aquila, Dept Biotechnol & Appl Clin Sci, Laquila, Italy
[2] Univ Aquila, Dept Informat Engn Comp Sci & Math, Laquila, Italy
[3] Univ Aquila, Ctr Excellence DEWS, Laquila, Italy
关键词
Competing risks; Predictive performance; Logistic regression; Supervised machine learning;
D O I
10.1007/s13304-025-02109-0
中图分类号
R61 [外科手术学];
学科分类号
摘要
Clinical risk prediction models are ubiquitous in many surgical domains. The traditional approach to develop these models involves the use of regression analysis. Machine learning algorithms are gaining in popularity as an alternative approach for prediction and classification problems. They can detect non-linear relationships between independent and dependent variables and incorporate many of them. In our work, we aimed to investigate the potential role of machine learning versus classical logistic regression for the preoperative risk assessment in proctological surgery. We used clinical data from a nationwide audit: the database consisted of 1510 patients affected by Goligher's grade III hemorrhoidal disease who underwent elective surgery. We collected anthropometric, clinical, and surgical data and we considered ten predictors to evaluate model-predictive performance. The clinical outcome was the complication rate evaluated at 30-day follow-up. Logistic regression and three machine learning techniques (Decision Tree, Support Vector Machine, Extreme Gradient Boosting) were compared in terms of area under the curve, balanced accuracy, sensitivity, and specificity. In our setting, machine learning and logistic regression models reached an equivalent predictive performance. Regarding the relative importance of the input features, all models agreed in identifying the most important factor. Combining and comparing statistical analysis and machine learning approaches in clinical field should be a common ambition, focused on improving and expanding interdisciplinary cooperation.
引用
收藏
页码:333 / 341
页数:9
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