Department of Nuclear Medicine, The Affiliated Hospital of Guizhou Medical University, Guiyang, China.
Department of Magnetic Resonance Imaging, The First Affiliated Hospital of Xinxiang Medical University, Xinxiang, China.
Cancer Med. 2024 Aug;13(16):e70046. doi: 10.1002/cam4.70046.
To explore the efficacy of a prediction model based on diffusion-weighted imaging (DWI) features extracted from deep learning (DL) and radiomics combined with clinical parameters and apparent diffusion coefficient (ADC) values to identify microsatellite instability (MSI) in endometrial cancer (EC).
This study included a cohort of 116 patients with EC, who were subsequently divided into training (n = 81) and test (n = 35) sets. From DWI, conventional radiomics features and convolutional neural network-based DL features were extracted. Random forest (RF) and logistic regression were adopted as classifiers. DL features, radiomics features, clinical variables, ADC values, and their combinations were applied to establish DL, radiomics, clinical, ADC, and combined models, respectively. The predictive performance was evaluated through the area under the receiver operating characteristic curve (AUC), total integrated discrimination index (IDI), net reclassification index (NRI), calibration curves, and decision curve analysis (DCA).
The optimal predictive model, based on an RF classifier, comprised four DL features, three radiomics features, two clinical variables, and an ADC value. In the training and test sets, this model exhibited AUC values of 0.989 (95% CI: 0.935-1.000) and 0.885 (95% CI: 0.731-0.967), respectively, demonstrating different degrees of improvement compared with the clinical, DL, radiomics, and ADC models (AUC-training = 0.671, 0.873, 0.833, and 0.814, AUC-test = 0.685, 0.783, 0.708, and 0.713, respectively). The NRI and IDI analyses revealed that the combined model resulted in improved risk reclassification of the MSI status compared to the clinical, radiomics, DL, and ADC models. The calibration curves and DCA indicated good consistency and clinical utility of this model, respectively.
The predictive model based on DWI features extracted from DL and radiomics combined with clinical parameters and ADC values could effectively assess the MSI status in EC.
探讨基于深度学习(DL)提取的扩散加权成像(DWI)特征与放射组学以及临床参数和表观扩散系数(ADC)值相结合的预测模型在识别子宫内膜癌(EC)中微卫星不稳定性(MSI)中的疗效。
本研究纳入了 116 例 EC 患者,随后将其分为训练集(n=81)和测试集(n=35)。从 DWI、常规放射组学特征和基于卷积神经网络的 DL 特征中提取信息。采用随机森林(RF)和逻辑回归作为分类器。分别应用 DL 特征、放射组学特征、临床变量、ADC 值及其组合来建立 DL、放射组学、临床、ADC 和联合模型,通过接受者操作特征曲线(ROC)下面积(AUC)、总综合判别指数(IDI)、净重新分类指数(NRI)、校准曲线和决策曲线分析(DCA)评估预测性能。
基于 RF 分类器的最优预测模型包括 4 个 DL 特征、3 个放射组学特征、2 个临床变量和 1 个 ADC 值。在训练和测试集中,该模型的 AUC 值分别为 0.989(95%CI:0.935-1.000)和 0.885(95%CI:0.731-0.967),与临床、DL、放射组学和 ADC 模型相比,均有不同程度的提高(AUC-训练=0.671、0.873、0.833 和 0.814,AUC-测试=0.685、0.783、0.708 和 0.713)。NRI 和 IDI 分析表明,与临床、放射组学、DL 和 ADC 模型相比,联合模型对 MSI 状态的风险再分类有了改善。校准曲线和 DCA 分别表明了该模型的良好一致性和临床实用性。
基于 DL 和放射组学提取的 DWI 特征与临床参数和 ADC 值相结合的预测模型可有效评估 EC 中的 MSI 状态。