Abstract
AbstractPathological evaluation of each tumor sample is the most crucial process in the clinical diagnosis workflow. Deep learning is a powerful approach that is widely used to increase accuracy and to simplify the diagnosis process. Previously we discovered clinically relevant subtypes (1 and 2) of pure seminoma, which is the most common histological type of testicular germ cell tumors (TGCTs). Here we developed deep learning decision making tool for identification of seminoma subtypes using histopathological slides. We used all available slides for pure seminoma samples from The Cancer Genome Atlas (TCGA). Seminoma regions of interest (ROIs) were annotated by a genitourinary pathologist. Verified ROIs were split into tiles 300×300 pixels, which were used for model training. The model achieved the highest accuracy at the validation step with 0.933 with 0.92 area under the ROC curve.
Publisher
Cold Spring Harbor Laboratory
Reference20 articles.
1. Recent trends in the incidence of testicular germ cell tumors in the United States
2. Howlader N , Noone AM , Krapcho M , et al. SEER Cancer Statistics Review, 1975-2017, National Cancer Institute. Bethesda, MD, https://seer.cancer.gov/csr/1975_2017/, based on November 2019 SEER data submission, posted to the SEER web site, April 2020.
3. Current management of testicular cancer;Korean J Urol,2013
4. Late adverse effects and quality of life in survivors of testicular germ cell tumour;Nat Rev Urol,2021
5. Prognostic Factors for Relapse in Stage I Seminoma Managed by Surveillance: A Pooled Analysis