论文标题
检测具有深神经网络的前列腺针头活检中的周围神经浸润
Detection of Perineural Invasion in Prostate Needle Biopsies with Deep Neural Networks
论文作者
论文摘要
背景:癌症在前列腺活检中检测周期侵袭(PNI)与预后不良有关。 PNI的评估和量化为;但是,劳动密集型。在研究中,我们旨在开发基于深层神经网络的算法,以帮助病理学家执行此任务。 方法:我们在2012年至2014年之间的前瞻性和诊断性STHLM3试验中,从7,406名男性中的大约80,000个活检核心中的每一个中收集,数字化和像素。我们还将PNI阴性活检核的10%以上(n = 8,318)数字化。从80%的男性中随机选择的数字化活检用于构建深层神经网络,其余20%用于评估算法的性能。 结果:对于前列腺活检核中PNI的检测,该网络基于106个PNI阳性核心,在接收器工作特性曲线下具有0.98(95%CI 0.97-0.99),在独立测试集中,基于106个PNI阳性核心和1,652个PNI负核。对于预先指定的工作点,这转化为0.87的灵敏度,特异性为0.97。相应的正和阴性预测值分别为0.67和0.99。为了将PNI区域定位在幻灯片中,我们估计平均相交的平均交叉点为0.50(CI:0.46-0.55)。 结论:我们已经开发了一种基于深层神经网络的算法,用于检测具有明显可接受的诊断特性的前列腺活检中的PNI。这些算法通过大大减少需要评估PNI的活检核心的数量并突出诊断兴趣区域,从而有可能在日常工作中帮助病理学家。
Background: The detection of perineural invasion (PNI) by carcinoma in prostate biopsies has been shown to be associated with poor prognosis. The assessment and quantification of PNI is; however, labor intensive. In the study we aimed to develop an algorithm based on deep neural networks to aid pathologists in this task. Methods: We collected, digitized and pixel-wise annotated the PNI findings in each of the approximately 80,000 biopsy cores from the 7,406 men who underwent biopsy in the prospective and diagnostic STHLM3 trial between 2012 and 2014. In total, 485 biopsy cores showed PNI. We also digitized more than 10% (n=8,318) of the PNI negative biopsy cores. Digitized biopsies from a random selection of 80% of the men were used to build deep neural networks, and the remaining 20% were used to evaluate the performance of the algorithm. Results: For the detection of PNI in prostate biopsy cores the network had an estimated area under the receiver operating characteristics curve of 0.98 (95% CI 0.97-0.99) based on 106 PNI positive cores and 1,652 PNI negative cores in the independent test set. For the pre-specified operating point this translates to sensitivity of 0.87 and specificity of 0.97. The corresponding positive and negative predictive values were 0.67 and 0.99, respectively. For localizing the regions of PNI within a slide we estimated an average intersection over union of 0.50 (CI: 0.46-0.55). Conclusion: We have developed an algorithm based on deep neural networks for detecting PNI in prostate biopsies with apparently acceptable diagnostic properties. These algorithms have the potential to aid pathologists in the day-to-day work by drastically reducing the number of biopsy cores that need to be assessed for PNI and by highlighting regions of diagnostic interest.