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Modality-Specific Deep Learning Model Ensembles Toward Improving TB Detection in Chest Radiographs

机译:模型特定的深度学习模型,旨在提高胸部射线照相中的TB检测

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The proposed study evaluates the efficacy of knowledge transfer gained through an ensemble of modality-specific deep learning models toward improving the state-of-the-art in Tuberculosis (TB) detection. A custom convolutional neural network (CNN) and selected popular pretrained CNNs are trained to learn modality-specific features from large-scale publicly available chest x-ray (CXR) collections including (i) RSNA dataset (normal = 8851, abnormal = 17833), (ii) Pediatric pneumonia dataset (normal = 1583, abnormal = 4273), and (iii) Indiana dataset (normal = 1726, abnormal = 2378). The knowledge acquired through modality-specific learning is transferred and fine-tuned for TB detection on the publicly available Shenzhen CXR collection (normal = 326, abnormal = 336). The predictions of the best performing models are combined using different ensemble methods to demonstrate improved performance over any individual constituent model in classifying TB-infected and normal CXRs. The models are evaluated through cross-validation (n = 5) at the patient-level with an aim to prevent overfitting, improve robustness and generalization. It is observed that a stacked ensemble of the top-3 retrained models demonstrates promising performance (accuracy: 0.941; 95% confidence interval (CI): [0.899, 0.985], area under the curve (AUC): 0.995; 95 CI: [0.945, 1.00]). One-way ANOVA analyses show there are no statistically significant differences in accuracy (P = .791) and AUC (P = .831) among the ensemble methods. Knowledge transferred through modality-specific learning of relevant features helped improve the classification. The ensemble model resulted in reduced prediction variance and sensitivity to training data fluctuations. Results from their combined use are superior to the state-of-the-art.
机译:拟议的研究评估了通过模态特异性深度学习模型的集合来改善结核病(TB)检测的效果。定制卷积神经网络(CNN)和所选流行的预磨削CNNS培训,用于学习来自大型公共可用胸部X射线(CXR)集合的模态特征,包括(i)RSNA数据集(普通= 8851,异常= 17833) ,(ii)小儿肺炎数据集(普通= 1583,异常= 4273),和(iii)印第安纳数据集(普通= 1726,异常= 2378)。通过模态 - 特定学习获得的知识被转移和微调用于公开的深圳CXR集合(正常= 326,异常= 336)的TB检测。使用不同的集合方法组合对最佳执行模型的预测来展示在分类TB感染和正常CXR中的任何单独组成模型上的改进性能。模型通过患者级别的交叉验证(n = 5)进行评估,目的是防止过度拟合,提高鲁棒性和泛化。观察到前3个烫皮模型的堆叠集合表明了性能(精度:0.941; 95%置信区间(CI):[0.899,0.985],曲线区域(AUC):0.995; 95 CI:[ 0.945,1.00])。单向ANOVA分析表明,合并方法中的精度(P = .791)和AUC(P = .831)没有统计上显着的差异。通过模态特定学习传递的知识有助于提高分类。集合模型导致预测方差减少和对训练数据波动的敏感性。其组合使用的结果优于最先进的。

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