Shah Milap, Naik Nithesh, Somani Bhaskar K, Hameed B M Zeeshan
Department of Urology, Kasturba Medical College Manipal, Manipal Academy of Higher Education, Manipal, Karnataka, India.
i-TRUE: International Training and Research in Uro-oncology and Endourology, Manipal, Karnataka, India.
Turk J Urol. 2020 Nov;46(Supp. 1):S27-S39. doi: 10.5152/tud.2020.20117. Epub 2020 May 27.
Artificial intelligence (AI) is used in various urological conditions such as urolithiasis, pediatric urology, urogynecology, benign prostate hyperplasia (BPH), renal transplant, and uro-oncology. The various models of AI and its application in urology subspecialties are reviewed and discussed.
Search strategy was adapted to identify and review the literature pertaining to the application of AI in urology using the keywords "urology," "artificial intelligence," "machine learning," "deep learning," "artificial neural networks," "computer vision," and "natural language processing" were included and categorized. Review articles, editorial comments, and non-urologic studies were excluded.
The article reviewed 47 articles that reported characteristics and implementation of AI in urological cancer. In all cases with benign conditions, artificial intelligence was used to predict outcomes of the surgical procedure. In urolithiasis, it was used to predict stone composition, whereas in pediatric urology and BPH, it was applied to predict the severity of condition. In cases with malignant conditions, it was applied to predict the treatment response, survival, prognosis, and recurrence on the basis of the genomic and biomarker studies. These results were also found to be statistically better than routine approaches. Application of radiomics in classification and nuclear grading of renal masses, cystoscopic diagnosis of bladder cancers, predicting Gleason score, and magnetic resonance imaging with computer-assisted diagnosis for prostate cancers are few applications of AI that have been studied extensively.
In the near future, we will see a shift in the clinical paradigm as AI applications will find their place in the guidelines and revolutionize the decision-making process.
人工智能(AI)被应用于多种泌尿系统疾病,如尿路结石、小儿泌尿外科、女性泌尿外科、良性前列腺增生(BPH)、肾移植和泌尿肿瘤学。本文对人工智能的各种模型及其在泌尿外科亚专业中的应用进行了综述和讨论。
采用检索策略,使用关键词“泌尿外科”、“人工智能”、“机器学习”、“深度学习”、“人工神经网络”、“计算机视觉”和“自然语言处理”来识别和综述与人工智能在泌尿外科应用相关的文献,并进行分类。排除综述文章、编辑评论和非泌尿外科研究。
本文综述了47篇报道人工智能在泌尿生殖系统癌症中的特征和应用的文章。在所有良性疾病病例中,人工智能用于预测手术结果。在尿路结石中,它用于预测结石成分,而在小儿泌尿外科和良性前列腺增生中,它用于预测病情严重程度。在恶性疾病病例中,它用于根据基因组和生物标志物研究预测治疗反应、生存率、预后和复发情况。这些结果在统计学上也优于常规方法。放射组学在肾肿块的分类和核分级、膀胱癌的膀胱镜诊断、预测 Gleason 评分以及前列腺癌的计算机辅助磁共振成像诊断中的应用是人工智能已被广泛研究的少数应用。
在不久的将来,我们将看到临床范式的转变,因为人工智能应用将在指南中占据一席之地,并彻底改变决策过程。