Abstract

BackgroundSpinal tuberculosis (TB) has the highest incidence in remote plateau areas, particularly in Tibet, China, due to inadequate local healthcare services, which not only facilitates the transmission of TB bacteria but also increases the burden on grassroots hospitals. Computer-aided diagnosis (CAD) is urgently required to improve the efficiency of clinical diagnosis of TB using computed tomography (CT) images. However, classical machine learning with handcrafted features generally has low accuracy, and deep learning with self-extracting features relies heavily on the size of medical datasets. Therefore, CAD, which effectively fuses multimodal features, is an alternative solution for spinal TB detection.MethodsA new deep learning method is proposed that fuses four elaborate image features, specifically three handcrafted features and one convolutional neural network (CNN) feature. Spinal TB CT images were collected from 197 patients with spinal TB, from 2013 to 2020, in the People’s Hospital of Tibet Autonomous Region, China; 3,000 effective lumbar spine CT images were randomly screened to our dataset, from which two sets of 1,500 images each were classified as tuberculosis (positive) and health (negative). In addition, virtual data augmentation is proposed to enlarge the handcrafted features of the TB dataset. Essentially, the proposed multimodal feature fusion CNN consists of four main sections: matching network, backbone (ResNet-18/50, VGG-11/16, DenseNet-121/161), fallen network, and gated information fusion network. Detailed performance analyses were conducted based on the multimodal features, proposed augmentation, model stability, and model-focused heatmap.ResultsExperimental results showed that the proposed model with VGG-11 and virtual data augmentation exhibited optimal performance in terms of accuracy, specificity, sensitivity, and area under curve. In addition, an inverse relationship existed between the model size and test accuracy. The model-focused heatmap also shifted from the irrelevant region to the bone destruction caused by TB.ConclusionThe proposed augmentation effectively simulated the real data distribution in the feature space. More importantly, all the evaluation metrics and analyses demonstrated that the proposed deep learning model exhibits efficient feature fusion for multimodal features. Our study provides a profound insight into the preliminary auxiliary diagnosis of spinal TB from CT images applicable to the Tibetan area.

Highlights

  • Spinal tuberculosis is secondary to TB of the lung, gastrointestinal tract, or lymphatic tract, and it causes bone TB via the blood circulation route (Garg and Somvanshi, 2011; Rasouli et al, 2012; Khanna and Sabharwal, 2019)

  • For each deep CNNs (DCNNs), two main networks with different numbers of layers were used to train on our small TB dataset to generate different sizes of models: 18 vs. 50 layers for ResNet, 11 vs. 16 layers for VGG, and 121 vs. 161 layers for DenseNet

  • This study proposes a novel deep learning (DL)-based classification model by fusing four image features, including three handcrafted features and one convolutional neural networks (CNNs) feature—scale-invariant feature transform (SIFT), speeded-up robust features (SURF), oriented rotated brief (ORB), and the CNN feature

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Summary

Introduction

Spinal tuberculosis (spinal TB) is secondary to TB of the lung, gastrointestinal tract, or lymphatic tract, and it causes bone TB via the blood circulation route (Garg and Somvanshi, 2011; Rasouli et al, 2012; Khanna and Sabharwal, 2019). Most Tibetan grassroots doctors cannot make expeditious medical decisions These poor health conditions lead to high rates of misdiagnosis, missed diagnosis, and delays in effective treatment, which result in severe complications that impose serious social burdens on Tibetan herdsmen (Wang et al, 2015). Computer-aided diagnosis (CAD), including classical machine learning (ML) and deep learning (DL), is an effective method for assisting primary care physicians in treating patients with spinal TB; CAD builds mathematical models on computers using fuzzy mathematics, probability statistics, and even artificial intelligence to process patient information and propose diagnostic opinions and treatment plans. Spinal tuberculosis (TB) has the highest incidence in remote plateau areas, in Tibet, China, due to inadequate local healthcare services, which facilitates the transmission of TB bacteria and increases the burden on grassroots hospitals. CAD, which effectively fuses multimodal features, is an alternative solution for spinal TB detection

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