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A Novel Automated Platform for Quantifying the Extent of Skeletal Tumour Involvement in Prostate Cancer Patients Using the Bone Scan Index

机译:一种新的自动化平台,用于使用骨扫描指数量化前列腺癌患者骨骼肿瘤参与程度

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摘要

BackgroundThere is little consensus on a standard approach to analysing bone scan images. The Bone Scan Index (BSI) is predictive of survival in patients with progressive prostate cancer (PCa), but the popularity of this metric is hampered by the tedium of the manual calculation. ObjectiveDevelop a fully automated method of quantifying the BSI and determining the clinical value of automated BSI measurements beyond conventional clinical and pathologic features. Design, setting, and participantsWe conditioned a computer-assisted diagnosis system identifying metastatic lesions on a bone scan to automatically compute BSI measurements. A training group of 795 bone scans was used in the conditioning process. Independent validation of the method used bone scans obtained ≤3 mo from diagnosis of 384 PCa cases in two large population-based cohorts. An experienced analyser (blinded to case identity, prior BSI, and outcome) scored the BSI measurements twice. We measured prediction of outcome using pretreatment Gleason score, clinical stage, and prostate-specific antigen with models that also incorporated either manual or automated BSI measurements. MeasurementsThe agreement between methods was evaluated using Pearson's correlation coefficient. Discrimination between prognostic models was assessed using the concordance index (C-index). Results and limitationsManual and automated BSI measurements were strongly correlated (ρ=0.80), correlated more closely (ρ=0.93) when excluding cases with BSI scores ≥10 (1.8%), and were independently associated with PCa death (p<0.0001 for each) when added to the prediction model. Predictive accuracy of the base model (C-index: 0.768; 95% confidence interval [CI], 0.702–0.837) increased to 0.794 (95% CI, 0.727–0.860) by adding manual BSI scoring, and increased to 0.825 (95% CI, 0.754–0.881) by adding automated BSI scoring to the base model. ConclusionsAutomated BSI scoring, with its 100% reproducibility, reduces turnaround time, eliminates operator-dependent subjectivity, and provides important clinical information comparable to that of manual BSI scoring.We developed and evaluated the first unbiased, fully automated software system to systematically calculate skeletal tumour burden in patients with metastatic cancer in the bone, simplifying a valuable but cumbersome technology with shortcomings that had prevented its widespread clinical use.
机译:背景技术关于分析骨扫描图像的标准方法几乎没有共识。骨扫描指数(BSI)可以预测进行性前列腺癌(PCa)患者的生存率,但这种计算方法的普及受到手动计算乏味的阻碍。目的开发一种定量BSI并确定常规BSI测量值超出常规临床和病理特征的临床价值的全自动方法。设计,设置和参与者我们建立了一个计算机辅助诊断系统,该系统可在骨骼扫描中识别出转移灶,以自动计算BSI测量值。在调节过程中使用了795个骨扫描的训练组。在两个基于人群的大型队列中,对384例PCa病例的诊断获得了≤3个月的骨扫描方法的独立验证。经验丰富的分析人员(对病例身份,先前的BSI和结局视而不见)对BSI测量值进行了两次评分。我们使用预处理的格里森评分,临床分期和前列腺特异性抗原,并结合了手动或自动BSI测量的模型,对结果的预测进行了测量。测量方法之间的一致性使用Pearson相关系数进行评估。使用一致性指数(C-index)评估了预后模型之间的区别。结果与局限性手动和自动BSI测量之间存在高度相关性(ρ= 0.80),在排除BSI评分≥10的病例(1.8%)时相关性更强(ρ= 0.93),并且与PCa死亡独立相关(每个p <0.0001) )添加到预测模型中。基本模型的预测准确性(C指数:0.768; 95%置信区间[CI],0.702–0.837)通过添加手动BSI评分增加到0.794(95%CI,0.727–0.860),并增加到0.825(95%) CI,0.754–0.881),将基本BSI评分添加到基本模型中。结论自动化的BSI评分具有100%的可重复性,减少了周转时间,消除了操作员依赖的主观性,并提供了与手动BSI评分可比的重要临床信息。减轻了转移性骨癌患者的负担,简化了一项有价值但繁琐的技术,其缺点是无法广泛应用于临床。

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