A two-stage model for precise identification and Gleason grading of clinically significant prostate cancer: a hybrid approach.

IF 1.8 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of Medical Radiation Sciences Pub Date : 2024-12-19 DOI:10.1002/jmrs.841
Yuyan Zou, Xuechun Wang, Fen Ma, Xulun Liu, Chunyue Jiao, Zhen Kang, Jingjing Cui, Yang Zhang, Yan Xie, Lei Chen, Ronghua Tian
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Abstract

Introduction: Accurate identification and grading of clinically significant prostate cancer (csPCa, Gleason Score ≥ 7) without invasive procedures remains a significant clinical challenge. This study aims to develop and evaluate a two-stage model designed for precise Gleason grading. The model initially uses radiomics-based multiparametric MRI to identify csPCa and then refines the Gleason grading by integrating clinical indicators and radiomics features.

Methods: We retrospectively analysed 399 patients with PI-RADS ≥ 3 lesions, categorising them into non-significant prostate cancer (nsPCa, 263 cases) and csPCa (136 cases, subdivided by GGs). Regions of interest (ROIs) for the prostate and lesions were manually delineated on T2-weighted and apparent diffusion coefficient (ADC) images, followed by the extraction of radiomics features. A two-stage model was developed: the first stage identifies csPCa using radiomics-based MRI, and the second integrates clinical indicators for Gleason grading. Model efficacy was evaluated by sensitivity, specificity, accuracy and area under the curve (AUC), with external validation on 100 patients.

Results: The first-stage model demonstrated excellent diagnostic accuracy for csPCa, achieving AUCs of 0.989, 0.982 and 0.976 in the training, testing and external validation cohorts, respectively. The second-stage model exhibited commendable Gleason grading capabilities, with AUCs of 0.82, 0.844 and 0.83 across the same cohorts. Decision curve analysis supported the clinical applicability of both models.

Conclusions: This study validated the potential of T2W and ADC image radiomics features as biomarkers in distinguishing csPCa. Combining these features with clinical indicators for csPCa Gleason grading provides superior predictive performance and significant clinical benefit.

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精确识别和格里森分级临床显著前列腺癌的两阶段模型:混合方法。
在没有侵入性手术的情况下准确识别和分级具有临床意义的前列腺癌(csPCa, Gleason评分≥7)仍然是一个重大的临床挑战。本研究旨在发展和评估一个两阶段的模型,该模型设计用于精确的格里森分级。该模型首先使用基于放射组学的多参数MRI来识别csPCa,然后通过整合临床指标和放射组学特征来改进Gleason分级。方法:我们回顾性分析399例PI-RADS≥3个病变的患者,将其分为非显著性前列腺癌(nsPCa 263例)和csPCa(136例,按GGs细分)。在t2加权和表观扩散系数(ADC)图像上手动划定前列腺和病变的感兴趣区域(roi),然后提取放射组学特征。开发了一个两阶段模型:第一阶段使用基于放射组学的MRI识别csPCa,第二阶段整合临床指标进行Gleason分级。采用敏感性、特异性、准确性和曲线下面积(AUC)评价模型疗效,并对100例患者进行外部验证。结果:第一阶段模型对csPCa的诊断准确率较高,在训练组、测试组和外部验证组的auc分别为0.989、0.982和0.976。第二阶段模型显示出值得称赞的Gleason分级能力,在相同的队列中auc分别为0.82、0.844和0.83。决策曲线分析支持两种模型的临床适用性。结论:本研究验证了T2W和ADC图像放射组学特征作为鉴别csPCa的生物标志物的潜力。将这些特征与csPCa Gleason分级的临床指标相结合,具有优越的预测性能和显著的临床效益。
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来源期刊
Journal of Medical Radiation Sciences
Journal of Medical Radiation Sciences RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
3.20
自引率
4.80%
发文量
69
审稿时长
8 weeks
期刊介绍: Journal of Medical Radiation Sciences (JMRS) is an international and multidisciplinary peer-reviewed journal that accepts manuscripts related to medical imaging / diagnostic radiography, radiation therapy, nuclear medicine, medical ultrasound / sonography, and the complementary disciplines of medical physics, radiology, radiation oncology, nursing, psychology and sociology. Manuscripts may take the form of: original articles, review articles, commentary articles, technical evaluations, case series and case studies. JMRS promotes excellence in international medical radiation science by the publication of contemporary and advanced research that encourages the adoption of the best clinical, scientific and educational practices in international communities. JMRS is the official professional journal of the Australian Society of Medical Imaging and Radiation Therapy (ASMIRT) and the New Zealand Institute of Medical Radiation Technology (NZIMRT).
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