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PENet—a scalable deep-learning model for automated diagnosis of pulmonary embolism using volumetric CT imaging

机译:PENET - 一种可扩展的深度学习模型,用于使用体积CT成像自动诊断肺栓塞

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Pulmonary embolism (PE) is a life-threatening clinical problem and computed tomography pulmonary angiography (CTPA) is the gold standard for diagnosis. Prompt diagnosis and immediate treatment are critical to avoid high morbidity and mortality rates, yet PE remains among the diagnoses most frequently missed or delayed. In this study, we developed a deep learning model—PENet, to automatically detect PE on volumetric CTPA scans as an end-to-end solution for this purpose. The PENet is a 77-layer 3D convolutional neural network (CNN) pretrained on the Kinetics-600 dataset and fine-tuned on a retrospective CTPA dataset collected from a single academic institution. The PENet model performance was evaluated in detecting PE on data from two different institutions: one as a hold-out dataset from the same institution as the training data and a second collected from an external institution to evaluate model generalizability to an unrelated population dataset. PENet achieved an AUROC of 0.84 [0.82–0.87] on detecting PE on the hold out internal test set and 0.85 [0.81–0.88] on external dataset. PENet also outperformed current state-of-the-art 3D CNN models. The results represent successful application of an end-to-end 3D CNN model for the complex task of PE diagnosis without requiring computationally intensive and time consuming preprocessing and demonstrates sustained performance on data from an external institution. Our model could be applied as a triage tool to automatically identify clinically important PEs allowing for prioritization for diagnostic radiology interpretation and improved care pathways via more efficient diagnosis.
机译:肺栓塞(PE)是一种危及生命的临床问题,计算机断层扫描血管造影(CTPA)是诊断的金标准。及时诊断和即时治疗对于避免高发病率和死亡率,但PE仍然是诊断最常见或延迟的诊断。在这项研究中,我们开发了一个深入学习模型 - Penet,自动检测体积CTPA扫描作为此目的的端到端解决方案。 Penet是一个77层3D卷积神经网络(CNN),在动力学-600数据集上磨普,并在从单个学术机构收集的回顾性CTPA数据集上进行微调。在检测来自两个不同机构的数据中的PE上进行了评估了PENET模型性能:作为从同一机构的举起数据集作为训练数据和从外部机构收集的第二个,以评估模型概括到无关的人口数据集。 PENET在储存内部测试组上检测PE和外部数据集上的0.85 [0.81-0.88]达到0.84 [0.82-0.87]的AUTOC。 Penet还优于当前最先进的3D CNN模型。结果代表了对PE诊断的复杂任务的成功应用于PE诊断的复杂任务,而不需要计算密集和耗时的预处理,并展示来自外部机构的数据的持续性能。我们的模型可以应用于分类工具,以自动识别临床上重要的PE,允许通过更有效的诊断进行诊断放射学解释和改善护理途径的优先级。

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