Interpretable machine learning-based individual analysis of acute kidney injury in immune checkpoint inhibitor therapy.
Minoru SakuragiEiichiro UchinoNoriaki SatoTakeshi MatsubaraAkihiko UedaYohei MineharuRyosuke KojimaMotoko YanagitaYasushi OkunoPublished in: PloS one (2024)
Our results suggest that the clustering method of individual predictive reasoning in machine learning models can be applied to infer clinically critical factors for developing each episode of AKI among patients with multiple AKI risk factors, such as immune checkpoint inhibitor-treated patients.