2024
DOI: 10.1371/journal.pone.0298673
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Interpretable machine learning-based individual analysis of acute kidney injury in immune checkpoint inhibitor therapy

Minoru Sakuragi,
Eiichiro Uchino,
Noriaki Sato
et al.

Abstract: Background Acute kidney injury (AKI) is a critical complication of immune checkpoint inhibitor therapy. Since the etiology of AKI in patients undergoing cancer therapy varies, clarifying underlying causes in individual cases is critical for optimal cancer treatment. Although it is essential to individually analyze immune checkpoint inhibitor-treated patients for underlying pathologies for each AKI episode, these analyses have not been realized. Herein, we aimed to individually clarify the underlying causes of … Show more

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