2024
DOI: 10.1002/ksa.12443
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Methodology and development of a machine learning probability calculator: Data heterogeneity limits ability to predict recurrence after arthroscopic Bankart repair

Sanne H. van Spanning,
Lukas P. E. Verweij,
Laurent A. M. Hendrickx
et al.

Abstract: PurposeThe aim of this study was to develop and train a machine learning (ML) algorithm to create a clinical decision support tool (i.e., ML‐driven probability calculator) to be used in clinical practice to estimate recurrence rates following an arthroscopic Bankart repair (ABR).MethodsData from 14 previously published studies were collected. Inclusion criteria were (1) patients treated with ABR without remplissage for traumatic anterior shoulder instability and (2) a minimum of 2 years follow‐up. Risk factors… Show more

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