Radiation encephalopathy (REP) is the most common complication for nasopharyngeal carcinoma (NPC) radiotherapy. It is highly desirable to assist clinicians in optimizing the NPC radiotherapy regimen to reduce radiotherapy-induced temporal lobe injury (RTLI) according to the probability of REP onset. To the best of our knowledge, it is the first exploration of predicting radiotherapy-induced REP by jointly exploiting image and non-image data in NPC radiotherapy regimen. We cast REP prediction as a survival analysis task and evaluate the predictive accuracy in terms of the concordance index (CI). We design a deep multimodal survival network (MSN) with two feature extractors to learn discriminative features from multimodal data. One feature extractor imposes feature selection on non-image data, and the other learns visual features from images. Because the priorly balanced CI (BCI) loss function directly maximizing the CI is sensitive to uneven sampling per batch. Hence, we propose a novel weighted CI (WCI) loss function to leverage all REP samples effectively by assigning their different weights with a dual average operation. We further introduce a temperature hyper-parameter for our WCI to sharpen the risk difference of sample pairs to help model convergence. We extensively evaluate our WCI on a private dataset to demonstrate its favourability against its counterparts. The experimental results also show multimodal data of NPC radiotherapy can bring more gains for REP risk prediction.
翻译:根据我们所知,这是第一次探索通过联合利用NPC放射疗法中图像和非模拟数据来预测放射治疗引起的治疗。我们将REP预测作为一项生存分析任务,并评价和谐指数(CI)的预测准确性。我们设计了一个深度多式联运生存网络,有两个特征提取器从多式联运数据中学习歧视性特征。一个特征提取器对非图像数据进行特征选择,其他则从图像中学习视觉特征。由于先前平衡的CI(BCI)损失功能直接最大化,直接使CI对每批取样不均十分敏感。因此,我们提议一个新的加权CI(CIS)损失功能,通过指定其不同重量的模型来有效地利用REP样本,使其在双轨数据中进行升级。我们还进一步展示了其高温数据。