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LSTM Network for Prediction of Hemorrhagic Transformation in Acute Stroke

机译:LSTM网络用于预测急性中风的出血性转化

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Hemorrhagic transformation (HT) is one of the most devastating complications of reperfusion therapy in acute ischemic stroke. Prediction of an upcoming HT remains beyond current techniques in routine clinical practice. If made available, such information would benefit the management of acute ischemic stroke patients and help to tailor therapeutic strategies. This study aims at providing a machine learning framework for predicting occurrence and extent of HT from source perfusion-weighted magnetic resonance imaging (PWI) combined with diffusion weighted imaging (DWI). The model relies on a LSTM network based on PWI combined with DWI imaging features into a fully connected neural network. A retrospective comparative analysis performed on 155 acute stroke patients demonstrate the efficacy of the LSTM model (AUC-ROC: 89.4%) against state-of-the-art machine learning models. Predicted likelihood of HT at the voxel level was evaluated against HT annotations of stroke neurologists obtained from follow-up gradient recalled echo (GRE) imaging.
机译:出血性转化(HT)是急性缺血性中风再灌注治疗中最具有破坏力的并发症之一。在常规临床实践中,对即将到来的HT的预测仍然超出了当前的技术范围。如果可用,这些信息将有利于急性缺血性中风患者的治疗,并有助于制定治疗策略。这项研究旨在提供一种机器学习框架,用于根据源灌注加权磁共振成像(PWI)和扩散加权成像(DWI)预测HT的发生和程度。该模型依赖于基于PWI的LSTM网络,并将DWI成像功能结合到一个完全连接的神经网络中。对155名急性中风患者进行的回顾性比较分析表明,LSTM模型(AUC-ROC:89.4%)相对于最新的机器学习模型的有效性。根据从后续梯度回想回声(GRE)成像获得的中风神经科医生的HT注释,评估了在体素水平上HT的预测可能性。

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