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Artificial intelligence–based algorithms for the diagnosis of prostate cancer: A systematic review
46
Zitationen
13
Autoren
2024
Jahr
Abstract
OBJECTIVES: The high incidence of prostate cancer causes prostatic samples to significantly affect pathology laboratories workflow and turnaround times (TATs). Whole-slide imaging (WSI) and artificial intelligence (AI) have both gained approval for primary diagnosis in prostate pathology, providing physicians with novel tools for their daily routine. METHODS: A systematic review according to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines was carried out in electronic databases to gather the available evidence on the application of AI-based algorithms to prostate cancer. RESULTS: Of 6290 articles, 80 were included, mostly (59%) dealing with biopsy specimens. Glass slides were digitized to WSI in most studies (89%), roughly two-thirds of which (66%) exploited convolutional neural networks for computational analysis. The algorithms achieved good to excellent results about cancer detection and grading, along with significantly reduced TATs. Furthermore, several studies showed a relevant correlation between AI-identified histologic features and prognostic predictive variables such as biochemical recurrence, extraprostatic extension, perineural invasion, and disease-free survival. CONCLUSIONS: The published evidence suggests that AI can be reliably used for prostate cancer detection and grading, assisting pathologists in the time-consuming screening of slides. Further technologic improvement would help widening AI's adoption in prostate pathology, as well as expanding its prognostic predictive potential.
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Autoren
Institutionen
- University of Verona(IT)
- University of Modena and Reggio Emilia(IT)
- Ospedale di Bolzano(IT)
- Istituti di Ricovero e Cura a Carattere Scientifico(IT)
- University of Milano-Bicocca(IT)
- University of Pittsburgh(US)
- University of Ferrara(IT)
- University of Padua(IT)
- The Ohio State University Wexner Medical Center(US)