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Advanced machine learning in action: identification of intracranial hemorrhage on computed tomography scans of the head with clinical workflow integration

机译:先进的机器学习实践:通过临床工作流程集成在头部的计算机断层扫描中识别颅内出血

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摘要

Intracranial hemorrhage (ICH) requires prompt diagnosis to optimize patient outcomes. We hypothesized that machine learning algorithms could automatically analyze computed tomography (CT) of the head, prioritize radiology worklists and reduce time to diagnosis of ICH. 46,583 head CTs (~2 million images) acquired from 2007–2017 were collected from several facilities across Geisinger. A deep convolutional neural network was trained on 37,074 studies and subsequently evaluated on 9499 unseen studies. The predictive model was implemented prospectively for 3 months to re-prioritize “routine” head CT studies as “stat” on realtime radiology worklists if an ICH was detected. Time to diagnosis was compared between the re-prioritized “stat” and “routine” studies. A neuroradiologist blinded to the study reviewed false positive studies to determine whether the dictating radiologist overlooked ICH. The model achieved an area under the ROC curve of 0.846 (0.837–0.856). During implementation, 94 of 347 “routine” studies were re-prioritized to “stat”, and 60/94 had ICH identified by the radiologist. Five new cases of ICH were identified, and median time to diagnosis was significantly reduced (p < 0.0001) from 512 to 19 min. In particular, one outpatient with vague symptoms on anti-coagulation was found to have an ICH which was treated promptly with reversal of anticoagulation, resulting in a good clinical outcome. Of the 34 false positives, the blinded over-reader identified four probable ICH cases overlooked in original interpretation. In conclusion, an artificial intelligence algorithm can prioritize radiology worklists to reduce time to diagnosis of new outpatient ICH by 96% and may also identify subtle ICH overlooked by radiologists. This demonstrates the positive impact of advanced machine learning in radiology workflow optimization.
机译:颅内出血(ICH)需要及时诊断以优化患者预后。我们假设机器学习算法可以自动分析头部的计算机断层扫描(CT),确定放射工作清单的优先级并减少诊断ICH的时间。从盖辛格地区的多家工厂收集了2007年至2017年获得的46,583台头部CT(约200万张图像)。深度卷积神经网络接受了37,074项研究的培训,随后进行了9499项未见研究的评估。该预测模型已进行了为期3个月的前瞻性检查,以在检测到ICH时将“常规”头颅CT研究重新确定为实时放射学工作清单上的“统计”。在重新确定优先级的“统计”和“常规”研究之间比较了诊断时间。一位对这项研究不知情的神经放射科医生回顾了假阳性研究,以确定决定性的放射科医生是否忽略了ICH。该模型在ROC曲线下的面积为0.846(0.837–0.856)。在实施过程中,将347项“常规”研究中的94项优先考虑为“统计”,并且60/94的放射线学家已确定了ICH。确定了5例新的ICH病例,诊断的中位时间从512分钟显着减少(p <0.0001)至19 min。特别是,发现一名抗凝症状模糊的门诊患者患有ICH,可立即进行抗凝逆转治疗,从而获得良好的临床效果。在这34个误报中,盲人阅读者发现了4个可能在原始解释中被忽略的ICH病例。总之,人工智能算法可以对放射工作清单进行优先排序,以将新门诊ICH的诊断时间减少96%,并且还可以识别放射科医生忽略的细微ICH。这证明了高级机器学习对放射学工作流程优化的积极影响。

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