Felefly Tony, Francis Ziad, Roukoz Camille, Fares Georges, Achkar Samir, Yazbeck Sandrine, Nasr Antoine, Kordahi Manal, Azoury Fares, Nasr Dolly Nehme, Nasr Elie, Noël Georges
Radiation Oncology Department, Hôtel-Dieu de France Hospital, Saint Joseph University, Beirut, Lebanon.
ICube Laboratory, University of Strasbourg, Strasbourg, France.
J Imaging Inform Med. 2025 Apr;38(2):858-864. doi: 10.1007/s10278-024-01240-5. Epub 2024 Aug 26.
Dedicated brain imaging for cancer patients is seldom recommended in the absence of symptoms. There is increasing availability of non-enhanced CT (NE-CT) of the brain, mainly owing to a wider utilization of Positron Emission Tomography-CT (PET-CT) in cancer staging. Brain metastases (BM) are often hard to diagnose on NE-CT. This work aims to develop a 3D Convolutional Neural Network (3D-CNN) based on brain NE-CT to distinguish patients with and without BM. We retrospectively included NE-CT scans for 100 patients with single or multiple BM and 100 patients without brain imaging abnormalities. Patients whose largest lesion was < 5 mm were excluded. The largest tumor was manually segmented on a matched contrast-enhanced T1 weighted Magnetic Resonance Imaging (MRI), and shape radiomics were extracted to determine the size and volume of the lesion. The brain was automatically segmented, and masked images were normalized and resampled. The dataset was split into training (70%) and validation (30%) sets. Multiple versions of a 3D-CNN were developed, and the best model was selected based on accuracy (ACC) on the validation set. The median largest tumor Maximum-3D-Diameter was 2.29 cm, and its median volume was 2.81 cc. Solitary BM were found in 27% of the patients, while 49% had > 5 BMs. The best model consisted of 4 convolutional layers with 3D average pooling layers, dropout layers of 50%, and a sigmoid activation function. Mean validation ACC was 0.983 (SD: 0.020) and mean area under receiver-operating characteristic curve was 0.983 (SD: 0.023). Sensitivity was 0.983 (SD: 0.020). We developed an accurate 3D-CNN based on brain NE-CT to differentiate between patients with and without BM. The model merits further external validation.
在没有症状的情况下,很少建议对癌症患者进行专门的脑部成像检查。由于正电子发射断层扫描-计算机断层扫描(PET-CT)在癌症分期中的更广泛应用,脑部非增强CT(NE-CT)的可用性越来越高。脑转移瘤(BM)在NE-CT上往往难以诊断。这项工作旨在开发一种基于脑部NE-CT的三维卷积神经网络(3D-CNN),以区分有无BM的患者。我们回顾性纳入了100例单发或多发BM患者和100例无脑部影像异常患者的NE-CT扫描。最大病灶<5mm的患者被排除。在匹配的对比增强T1加权磁共振成像(MRI)上手动分割最大肿瘤,并提取形状放射组学特征以确定病灶的大小和体积。自动分割脑部,并对掩膜图像进行归一化和重采样。数据集被分为训练集(70%)和验证集(30%)。开发了多个版本的3D-CNN,并根据验证集上的准确率(ACC)选择最佳模型。最大肿瘤的中位数最大三维直径为2.29cm,中位数体积为2.81cc。27%的患者发现孤立性BM,而49%的患者有>5个BM。最佳模型由4个卷积层、3D平均池化层、50%的随机失活层和一个Sigmoid激活函数组成。平均验证ACC为0.983(标准差:0.020),平均受试者工作特征曲线下面积为0.983(标准差:0.023)。敏感性为