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SCI-Expanded JCR Q2 Özgün Makale Scopus
Navigating the gray zone: Machine learning can differentiate malignancy in PI-RADS 3 lesions
Urologic Oncology: Seminars and Original Investigations 2024
Scopus Eşleşmesi Bulundu
43
Cilt
195-195.e20
Sayfa
Scopus Yazarları: Emre Altıntaş, Ali Şahin, Seyit Erol, Halil Özer, Murat Gul, Ali Furkan Batur, Mehmet Kaynar, Ozcan Kilic, Serdar Goktas
Özet
Introduction: The objective of this study is to predict the probability of prostate cancer in PI-RADS 3 lesions using machine learning methods that incorporate clinical and mpMRI parameters. Methods: The study included patients who had PI-RADS 3 lesions detected on mpMRI and underwent fusion biopsy between January 2020 and January 2024. Radiological parameters (Apparent diffusion coefficient (ADC), tumour ADC/contralateral ADC ratio, Ktrans value, periprostatic adipose tissue thickness, lesion size, prostate volume) and clinical parameters (age, body mass index, total prostate specific antigen, free PSA, PSA density, systemic inflammatory index, neutrophil-lymphocyte ratio [NLR], platelet lymphocyte ratio, lymphocyte monocyte ratio) were documented. The probability of prostate cancer prediction in PI-RADS 3 lesions was calculated using 6 different machine-learning models, with the input parameters being the aforementioned variables. Results: Of the 235 participants in the trial, 61 had malignant fusion biopsy pathology and 174 had benign pathology. Among 6 different machine learning algorithms, the random forest model had the highest accuracy (0.86±0.04; 95% CI 0.85–0.87), F1 score (0.91±0.03; 95% CI 0.91–0.92) and AUC value (0.92±0.06; 95% CI 0.88–0.90). In SHAP analysis based on random forest model, tumour ADC, tumour ADC/contralateral ADC ratio and PSA density were the 3 most successful parameters in predicting malignancy. On the other hand, systemic inflammatory index and neutrophil lymphocyte ratio showed higher accuracy in predicting malignancy than total PSA, age, free PSA/total PSA and lesion size in SHAP analysis. Conclusion: Among the machine learning models we developed, especially the random forest model can predict malignancy in PI-RADS 3 lesions and prevent unnecessary biopsy. This model can be used in clinical practice with multicentre studies including more patients.
Anahtar Kelimeler (Scopus)
Machine learning PI-RADS 3 Prostate cancer Random forest Systemic inflammatory index

Anahtar Kelimeler

Machine learning PI-RADS 3 Prostate cancer Random forest Systemic inflammatory index

Makale Bilgileri

Dergi Urologic Oncology: Seminars and Original Investigations
ISSN 1078-1439
Yıl 2024 / 1. ay
Makale Türü Özgün Makale
Hakemlik Hakemli
Endeks SCI-Expanded
JCR Quartile Q2
TEŞV Puanı 16,00
Yayın Dili İngilizce
Kapsam Uluslararası
Toplam Yazar 9 kişi
Erişim Türü Basılı+Elektronik
Erişim Linki Makaleye Git
Alan Sağlık Bilimleri Temel Alanı Üroloji

YÖKSİS Yazar Kaydı

Yazar Adı ALTINTAŞ EMRE,ŞAHİN ALİ,EROL SEYİT,ÖZER HALİL,GÜL MURAT,BATUR ALİ FURKAN,KAYNAR MEHMET,KILIÇ ÖZCAN,GÖKTAŞ SERDAR
YÖKSİS ID 8482134

Metrikler

JCR Quartile Q2
TEŞV Puanı 16,00
Yazar Sayısı 9