利用 EfficientNet 从扩散加权成像预测宫颈癌的分期和分级。

IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Souha Aouadi, Tarraf Torfeh, Othmane Bouhali, S A Yoganathan, Satheesh Paloor, Suparna Chandramouli, Rabih Hammoud, Noora Al-Hammadi
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引用次数: 0

摘要

目的:本研究旨在引入一种创新的无创方法,利用单一图像进行分级和分期预测。宫颈癌(CC)的分级和分期是利用深度卷积神经网络(DCNN)通过弥散加权成像(DWI),特别是表观弥散系数(ADC)映射确定的。该研究获得了美国国际研究局(IRB)的批准。每个患者的矢状切片和轴切片都包含从 ADC 图中提取的肿瘤总体积(GTV)。这些数据是使用单指数模型从放疗前获得的扩散加权图像(b 值=0、100、1000)中计算得出的。使用合成少数群体过采样技术(SMOTE)创建了平衡训练集,并将其输入 DCNN。EfficientNetB0 和 EfficientNetB3 从 ImageNet 应用程序转移到二元和四元分类任务中。对网络的评估采用了五倍分层交叉验证。计算了多个评价指标,包括接收者工作特征曲线下面积(AUC)。结果显示:在等级预测方面,EfficientNetB3 的 AUC=0.924 表现最佳。在分期预测方面,EfficientNetB0 的 AUC=0.931 是最好的。在分期预测方面,EfficientNetB0-B3 的表现优于 ResNet50(AUC=0.71)和 Xception(AUC=0.89);在等级分类方面,ResNet50 和 Xception 的 AUC 分别为 0.89 和 0.90,表现相当。DCNN的表现优于放射学分析,后者的AUC=0.67(等级)和AUC=0.66(分期)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of cervix cancer stage and grade from diffusion weighted imaging using EfficientNet.

Purpose. This study aims to introduce an innovative noninvasive method that leverages a single image for both grading and staging prediction. The grade and the stage of cervix cancer (CC) are determined from diffusion-weighted imaging (DWI) in particular apparent diffusion coefficient (ADC) maps using deep convolutional neural networks (DCNN).Methods. datasets composed of 85 patients having annotated tumor stage (I, II, III, and IV), out of this, 66 were with grade (II and III) and the remaining patients with no reported grade were retrospectively collected. The study was IRB approved. For each patient, sagittal and axial slices containing the gross tumor volume (GTV) were extracted from ADC maps. These were computed using the mono exponential model from diffusion weighted images (b-values = 0, 100, 1000) that were acquired prior to radiotherapy treatment. Balanced training sets were created using the Synthetic Minority Oversampling Technique (SMOTE) and fed to the DCNN. EfficientNetB0 and EfficientNetB3 were transferred from the ImageNet application to binary and four-class classification tasks. Five-fold stratified cross validation was performed for the assessment of the networks. Multiple evaluation metrics were computed including the area under the receiver operating characteristic curve (AUC). Comparisons with Resnet50, Xception, and radiomic analysis were performed.Results. for grade prediction, EfficientNetB3 gave the best performance with AUC = 0.924. For stage prediction, EfficientNetB0 was the best with AUC = 0.931. The difference between both models was, however, small and not statistically significant EfficientNetB0-B3 outperformed ResNet50 (AUC = 0.71) and Xception (AUC = 0.89) in stage prediction, and demonstrated comparable results in grade classification, where AUCs of 0.89 and 0.90 were achieved by ResNet50 and Xception, respectively. DCNN outperformed radiomic analysis that gave AUC = 0.67 (grade) and AUC = 0.66 (stage).Conclusion.the prediction of CC grade and stage from ADC maps is feasible by adapting EfficientNet approaches to the medical context.

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来源期刊
Biomedical Physics & Engineering Express
Biomedical Physics & Engineering Express RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
2.80
自引率
0.00%
发文量
153
期刊介绍: BPEX is an inclusive, international, multidisciplinary journal devoted to publishing new research on any application of physics and/or engineering in medicine and/or biology. Characterized by a broad geographical coverage and a fast-track peer-review process, relevant topics include all aspects of biophysics, medical physics and biomedical engineering. Papers that are almost entirely clinical or biological in their focus are not suitable. The journal has an emphasis on publishing interdisciplinary work and bringing research fields together, encompassing experimental, theoretical and computational work.
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