A Deep Learning-Based EffConvNeXt Model for Automatic Classification of Cystic Bronchiectasis: An Explainable AI Approach.

Veysi Tekin, Muhammed Tekinhatun, Salih Taha Alperen Özçelik, Hüseyin Fırat, Hüseyin Üzen
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Abstract

Cystic bronchiectasis and pneumonia are respiratory conditions that significantly impact morbidity and mortality worldwide. Diagnosing these diseases accurately is crucial, as early detection can greatly improve patient outcomes. These diseases are respiratory conditions that present with overlapping features on chest X-rays (CXR), making accurate diagnosis challenging. Recent advancements in deep learning (DL) have improved diagnostic accuracy in medical imaging. This study proposes the EffConvNeXt model, a hybrid approach combining EfficientNetB1 and ConvNeXtTiny, designed to enhance classification accuracy for cystic bronchiectasis, pneumonia, and normal cases in CXRs. The model effectively balances EfficientNetB1's efficiency with ConvNeXtTiny's advanced feature extraction, allowing for better identification of complex patterns in CXR images. Additionally, the EffConvNeXt model combines EfficientNetB1 and ConvNeXtTiny, addressing limitations of each model individually: EfficientNetB1's SE blocks improve focus on critical image areas while keeping the model lightweight and fast, and ConvNeXtTiny enhances detection of subtle abnormalities, making the combined model highly effective for rapid and accurate CXR image analysis in clinical settings. For the performance analysis of the EffConvNeXt model, experimental studies were conducted using 5899 CXR images collected from Dicle University Medical Faculty. When used individually, ConvNeXtTiny achieved an accuracy rate of 97.12%, while EfficientNetB1 reached 97.79%. By combining both models, the EffConvNeXt raised the accuracy to 98.25%, showing a 0.46% improvement. With this result, the other tested DL models fell behind. These findings indicate that EffConvNeXt provides a reliable, automated solution for distinguishing cystic bronchiectasis and pneumonia, supporting clinical decision-making with enhanced diagnostic accuracy.

基于深度学习的囊性支气管扩张自动分类EffConvNeXt模型:一种可解释的人工智能方法。
囊性支气管扩张症和肺炎是严重影响全世界发病率和死亡率的呼吸系统疾病。准确诊断这些疾病至关重要,因为早期发现可以大大改善患者的预后。这些疾病是呼吸系统疾病,在胸部x光片(CXR)上表现为重叠特征,使准确诊断具有挑战性。深度学习(DL)的最新进展提高了医学成像的诊断准确性。本研究提出EffConvNeXt模型,这是一种结合了EfficientNetB1和ConvNeXtTiny的混合方法,旨在提高cxr中囊性支气管扩张、肺炎和正常病例的分类准确性。该模型有效地平衡了EfficientNetB1的效率和ConvNeXtTiny的高级特征提取,从而更好地识别CXR图像中的复杂模式。此外,EffConvNeXt模型结合了effentnetb1和ConvNeXtTiny,分别解决了每个模型的局限性:effentnetb1的SE块提高了对关键图像区域的关注,同时保持了模型的轻量化和快速,而ConvNeXtTiny增强了对细微异常的检测,使组合模型在临床环境中快速准确地进行CXR图像分析。为了分析EffConvNeXt模型的性能,实验研究使用了从Dicle大学医学院收集的5899张CXR图像。单独使用时,ConvNeXtTiny的准确率为97.12%,而EfficientNetB1的准确率为97.79%。结合两种模型,EffConvNeXt将准确率提高到98.25%,提高了0.46%。有了这个结果,其他被测试的DL模型就落后了。这些结果表明,EffConvNeXt为区分囊性支气管扩张和肺炎提供了可靠、自动化的解决方案,支持临床决策,提高了诊断准确性。
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