Meddeb Aymen, Kossen Tabea, Bressem Keno K, Molinski Noah, Hamm Bernd, Nagel Sebastian N
Charité-Universitätsmedizin Berlin, Corporate Member of Freie Universität Berlin and Humboldt-Universität zu Berlin, Klinik für Radiologie, Hindenburgdamm 30, 12203 Berlin, Germany.
CLAIM-Charité Lab for AI in Medicine, Charité-Universitätsmedizin Berlin, Augustenburger Platz 1, 13353 Berlin, Germany.
Cancers (Basel). 2022 Nov 8;14(22):5476. doi: 10.3390/cancers14225476.
Splenomegaly is a common cross-sectional imaging finding with a variety of differential diagnoses. This study aimed to evaluate whether a deep learning model could automatically segment the spleen and identify the cause of splenomegaly in patients with cirrhotic portal hypertension versus patients with lymphoma disease. This retrospective study included 149 patients with splenomegaly on computed tomography (CT) images (77 patients with cirrhotic portal hypertension, 72 patients with lymphoma) who underwent a CT scan between October 2020 and July 2021. The dataset was divided into a training ( = 99), a validation ( = 25) and a test cohort ( = 25). In the first stage, the spleen was automatically segmented using a modified U-Net architecture. In the second stage, the CT images were classified into two groups using a 3D DenseNet to discriminate between the causes of splenomegaly, first using the whole abdominal CT, and second using only the spleen segmentation mask. The classification performances were evaluated using the area under the receiver operating characteristic curve (AUC), accuracy (ACC), sensitivity (SEN), and specificity (SPE). Occlusion sensitivity maps were applied to the whole abdominal CT images, to illustrate which regions were important for the prediction. When trained on the whole abdominal CT volume, the DenseNet was able to differentiate between the lymphoma and liver cirrhosis in the test cohort with an AUC of 0.88 and an ACC of 0.88. When the model was trained on the spleen segmentation mask, the performance decreased (AUC = 0.81, ACC = 0.76). Our model was able to accurately segment splenomegaly and recognize the underlying cause. Training on whole abdomen scans outperformed training using the segmentation mask. Nonetheless, considering the performance, a broader and more general application to differentiate other causes for splenomegaly is also conceivable.
脾肿大是一种常见的横断面成像表现,有多种鉴别诊断。本研究旨在评估深度学习模型能否自动分割脾脏,并识别肝硬化门静脉高压患者与淋巴瘤患者脾肿大的原因。这项回顾性研究纳入了149例在计算机断层扫描(CT)图像上显示脾肿大的患者(77例肝硬化门静脉高压患者,72例淋巴瘤患者),这些患者在2020年10月至2021年7月期间接受了CT扫描。数据集被分为训练集(n = 99)、验证集(n = 25)和测试集(n = 25)。在第一阶段,使用改进的U-Net架构自动分割脾脏。在第二阶段,使用3D DenseNet将CT图像分为两组,以区分脾肿大的原因,首先使用全腹部CT,其次仅使用脾脏分割掩码。使用受试者操作特征曲线下面积(AUC)、准确率(ACC)、灵敏度(SEN)和特异性(SPE)评估分类性能。将遮挡敏感度图应用于全腹部CT图像,以说明哪些区域对预测很重要。当在全腹部CT体积上进行训练时,DenseNet能够在测试集中区分淋巴瘤和肝硬化,AUC为0.88,ACC为0.88。当模型在脾脏分割掩码上进行训练时,性能下降(AUC = 0.81,ACC = 0.76)。我们的模型能够准确分割脾肿大并识别潜在原因。在全腹部扫描上进行训练的效果优于使用分割掩码进行训练。尽管如此,考虑到性能,也可以设想将其更广泛、更普遍地应用于鉴别脾肿大的其他原因。