Department of Urology, Sun Yat-sen Memorial Hospital, Sun Yat-sen University, Guangzhou, Guangdong, China.
Guangdong Provincial Key Laboratory of Malignant Tumor Epigenetics and Gene Regulation, Sun Yat-sen Memorial Hospital, Sun Yat-sen University, Guangzhou, Guangdong, China.
Cancer Med. 2024 Oct;13(20):e70338. doi: 10.1002/cam4.70338.
Early detection of bladder cancer (BCa) can have a positive impact on patients' prognosis. However, there is currently no widely accepted method for early screening of BCa. We aimed to develop an efficient, clinically applicable, and noninvasive method for the early screening of BCa by detecting specific serum miRNA levels.
A mixed-cohort (including BCa, 12 different other cancers, benign disease patients, and health population) study was conducted using a sample size of 16,189. Five machine learning algorithms were utilized to develop screening models for BCa using the training dataset. The performance of the model was evaluated using receiver operating characteristic curve and decision curve analysis on the testing dataset, and subsequently, the model with the best predictive power was selected. Furthermore, the selected model's screening performance was evaluated using both the validation set and external set.
The BCaS3miR model, utilizing only three serum miRNAs (miR-6087, miR-1343-3p, and miR-5100) and based on the KNN algorithm, is the superior screening model chosen for BCa. BCaS3miR consistently performed well in both the testing, validation, and external sets, exceeding 90% sensitivity and specificity levels. The area under the curve was 0.990 (95% CI: 0.984-0.991), 0.964 (95% CI: 0.936-0.984), and 0.917 (95% CI: 0.836-0.953) in the testing, validation, and external set. The subgroup analysis revealed that the BCaS3miR model demonstrated outstanding screening accuracy in various clinical subgroups of BCa. In addition, we developed a BCa screening scoring model (BCaSS) based on the levels of miR-1343-3p/miR-6087 and miR-5100/miR-6087. The screening effect of BCaSS is investigated and the findings indicate that it has predictability and distinct advantages.
Using a mixed cohort with the largest known sample size to date, we have developed effective screening models for BCa, namely BCaS3miR and BCaSS. The models demonstrated remarkable screening accuracy, indicating potential for the early detection of BCa.
早期发现膀胱癌(BCa)可以对患者的预后产生积极影响。然而,目前尚无广泛接受的用于 BCa 早期筛查的方法。我们旨在通过检测特定的血清 miRNA 水平来开发一种高效、临床适用且非侵入性的 BCa 早期筛查方法。
本研究采用混合队列(包括 BCa、12 种不同的其他癌症、良性疾病患者和健康人群),样本量为 16189 例。使用训练数据集,通过五种机器学习算法建立 BCa 筛查模型。使用测试数据集的受试者工作特征曲线和决策曲线分析评估模型的性能,然后选择具有最佳预测能力的模型。此外,使用验证集和外部集评估所选模型的筛查性能。
基于 KNN 算法,仅使用三种血清 miRNA(miR-6087、miR-1343-3p 和 miR-5100)的 BCaS3miR 模型是用于 BCa 的首选筛查模型。BCaS3miR 在测试、验证和外部集均表现良好,灵敏度和特异性均超过 90%。在测试、验证和外部集中,曲线下面积分别为 0.990(95%CI:0.984-0.991)、0.964(95%CI:0.936-0.984)和 0.917(95%CI:0.836-0.953)。亚组分析显示,BCaS3miR 模型在 BCa 的各种临床亚组中具有出色的筛查准确性。此外,我们还基于 miR-1343-3p/miR-6087 和 miR-5100/miR-6087 水平开发了一种 BCa 筛查评分模型(BCaSS)。我们对 BCaSS 的筛查效果进行了研究,结果表明其具有预测性和明显的优势。
使用迄今为止最大的已知样本量的混合队列,我们开发了用于 BCa 的有效筛查模型,即 BCaS3miR 和 BCaSS。这些模型表现出出色的筛查准确性,表明其具有早期检测 BCa 的潜力。