Cicek Vedat, Orhan Ahmet Lutfullah, Saylik Faysal, Sharma Vanshali, Tur Yalcin, Erdem Almina, Babaoglu Mert, Ayten Omer, Taslicukur Solen, Oz Ahmet, Uzun Mehmet, Keser Nurgul, Hayiroglu Mert Ilker, Cinar Tufan, Bagci Ulas
Machine & Hybrid Intelligence Lab, Department of Radiology, Northwestern University.
Sultan II Abdülhamid Han Training and Research Hospital, Department of Cardiology, Health Sciences University.
Circ J. 2025 Apr 25;89(5):602-611. doi: 10.1253/circj.CJ-24-0630. Epub 2024 Nov 30.
Accurate prediction of short-term mortality in patients with acute pulmonary embolism (PE) is critical for optimizing treatment strategies and improving patient outcomes. The Pulmonary Embolism Severity Index (PESI) is the current reference score used for this purpose, but it has limitations regarding predictive accuracy. Our aim was to develop a new short-term mortality prediction model for PE patients based on deep learning (DL) with multimodal data, including imaging and clinical/demographic data.
We developed a novel multimodal deep learning (mmDL) model using contrast-enhanced multidetector computed tomography scans combined with clinical and demographic data to predict short-term mortality in patients with acute PE. We benchmarked various machine learning architectures, including XGBoost, convolutional neural networks (CNNs), and Transformers. Our cohort included 207 acute PE patients, of whom 53 died during their hospital stay. The mmDL model achieved an area under the receiver operating characteristic curve (AUC) of 0.98 (P<0.001), significantly outperforming the PESI score, which had an AUC of 0.86 (P<0.001). Statistical analysis confirmed that the mmDL model was superior to PESI in predicting short-term mortality (P<0.001).
Our proposed mmDL model predicts short-term mortality in patients with acute PE with high accuracy and significantly outperforms the current standard PESI score.
准确预测急性肺栓塞(PE)患者的短期死亡率对于优化治疗策略和改善患者预后至关重要。肺栓塞严重程度指数(PESI)是目前用于此目的的参考评分,但在预测准确性方面存在局限性。我们的目标是基于深度学习(DL)开发一种新的PE患者短期死亡率预测模型,该模型使用多模态数据,包括影像学和临床/人口统计学数据。
我们开发了一种新型多模态深度学习(mmDL)模型,该模型使用对比增强多层螺旋CT扫描结合临床和人口统计学数据来预测急性PE患者的短期死亡率。我们对各种机器学习架构进行了基准测试,包括XGBoost、卷积神经网络(CNN)和Transformer。我们的队列包括207例急性PE患者,其中53例在住院期间死亡。mmDL模型的受试者工作特征曲线下面积(AUC)为0.98(P<0.001),显著优于PESI评分,PESI评分的AUC为0.86(P<0.001)。统计分析证实,mmDL模型在预测短期死亡率方面优于PESI(P<0.001)。
我们提出的mmDL模型能够高精度地预测急性PE患者的短期死亡率,并且显著优于当前的标准PESI评分。