Department of Radiation Oncology, The University of Texas Southwestern Medical Center, Dallas, TX 75390, United States of America. Medical Artificial Intelligence and Automation (MAIA) Lab, The University of Texas Southwestern Medical Center, Dallas, TX 75390, United States of America.
Phys Med Biol. 2019 Mar 29;64(7):075011. doi: 10.1088/1361-6560/ab083a.
Lymph node metastasis (LNM) is a significant prognostic factor in patients with head and neck cancer, and the ability to predict it accurately is essential to optimizing treatment. Positron emission tomography (PET) and computed tomography (CT) imaging are routinely used to identify LNM. Although large or highly active lymph nodes (LNs) have a high probability of being positive, identifying small or less reactive LNs is challenging. The accuracy of LNM identification strongly depends on the physician's experience, so an automatic prediction model for LNM based on CT and PET images is warranted to assist LMN identification across care providers and facilities. Radiomics and deep learning are the two promising imaging-based strategies for node malignancy prediction. Radiomics models are built based on handcrafted features, while deep learning learns the features automatically. To build a more reliable model, we proposed a hybrid predictive model that takes advantages of both radiomics and deep learning based strategies. We designed a new many-objective radiomics (MaO-radiomics) model and a 3D convolutional neural network (3D-CNN) that fully utilizes spatial contextual information, and we fused their outputs through an evidential reasoning (ER) approach. We evaluated the performance of the hybrid method for classifying normal, suspicious and involved LNs. The hybrid method achieves an accuracy (ACC) of 0.88 while XmasNet and Radiomics methods achieve 0.81 and 0.75, respectively. The hybrid method provides a more accurate way for predicting LNM using PET and CT.
淋巴结转移 (LNM) 是头颈部癌症患者的重要预后因素,准确预测 LNM 对于优化治疗至关重要。正电子发射断层扫描 (PET) 和计算机断层扫描 (CT) 成像通常用于识别 LNM。尽管大或高活性的淋巴结 (LN) 有很高的阳性概率,但识别小或反应性较低的 LN 具有挑战性。LNM 识别的准确性强烈依赖于医生的经验,因此需要基于 CT 和 PET 图像的 LNM 自动预测模型,以协助跨护理提供者和设施的 LMN 识别。放射组学和深度学习是两种有前途的基于影像学的淋巴结恶性预测策略。放射组学模型基于手工制作的特征构建,而深度学习则自动学习特征。为了构建更可靠的模型,我们提出了一种利用放射组学和深度学习策略优势的混合预测模型。我们设计了一种新的多目标放射组学 (MaO-radiomics) 模型和一个充分利用空间上下文信息的 3D 卷积神经网络 (3D-CNN),并通过证据推理 (ER) 方法融合它们的输出。我们评估了混合方法对正常、可疑和受累 LN 进行分类的性能。混合方法的准确率 (ACC) 为 0.88,而 XmasNet 和放射组学方法的准确率分别为 0.81 和 0.75。混合方法为使用 PET 和 CT 预测 LNM 提供了更准确的方法。