Predictive modeling for peri-implantitis by using machine learning techniques

The purpose of this retrospective cohort study was to create a model for predicting the onset of peri-implantitis by using machine learning methods and to clarify interactions between risk indicators. This study evaluated 254 implants, 127 with and 127 without peri-implantitis, from among 1408 impla...

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Veröffentlicht in:Scientific reports 2021-05, Vol.11 (1), p.11090-11090, Article 11090
Hauptverfasser: Mameno, Tomoaki, Wada, Masahiro, Nozaki, Kazunori, Takahashi, Toshihito, Tsujioka, Yoshitaka, Akema, Suzuna, Hasegawa, Daisuke, Ikebe, Kazunori
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Sprache:eng
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Zusammenfassung:The purpose of this retrospective cohort study was to create a model for predicting the onset of peri-implantitis by using machine learning methods and to clarify interactions between risk indicators. This study evaluated 254 implants, 127 with and 127 without peri-implantitis, from among 1408 implants with at least 4 years in function. Demographic data and parameters known to be risk factors for the development of peri-implantitis were analyzed with three models: logistic regression, support vector machines, and random forests (RF). As the results, RF had the highest performance in predicting the onset of peri-implantitis (AUC: 0.71, accuracy: 0.70, precision: 0.72, recall: 0.66, and f1-score: 0.69). The factor that had the most influence on prediction was implant functional time, followed by oral hygiene. In addition, PCR of more than 50% to 60%, smoking more than 3 cigarettes/day, KMW less than 2 mm, and the presence of less than two occlusal supports tended to be associated with an increased risk of peri-implantitis. Moreover, these risk indicators were not independent and had complex effects on each other. The results of this study suggest that peri-implantitis onset was predicted in 70% of cases, by RF which allows consideration of nonlinear relational data with complex interactions.
ISSN:2045-2322
2045-2322
DOI:10.1038/s41598-021-90642-4