SmartOralDx:一个深度学习驱动的系统,用于从临床图像中精确分类口腔疾病

Jashvant Kumar , Khaled Mohamad Almustafa , Akhilesh Kumar Sharma , Muhammed Sutcu , Juliano Katrib
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引用次数: 0

摘要

口腔疾病的早期和准确诊断对于有效治疗和改善患者预后至关重要。本研究介绍了基于深度学习的诊断系统SmartOralDx,该系统旨在从临床图像中对多种口腔疾病类别进行分类。系统使用各种卷积神经网络(CNN)架构进行评估,包括基线CNN、MobileNetV2、CNN + LSTM和CNN + BiLSTM with Attention,跨数据集包括临床和x射线图像。初步结果表明,包含低对比度的x射线图像会对模型性能产生负面影响。通过将数据集细化为仅包括高分辨率临床图像,并使用CLAHE应用对比度增强技术,可以显著提高分类精度。对比增强CNN模型的测试准确率最高,达到94.26%,而结合时间和注意机制的混合模型进一步增强了可解释性和泛化性,CNN + LSTM模型的测试准确率达到90.75%。该研究强调了数据质量、增强和模型架构在医学图像分类中的重要性,并表明SmartOralDx在整合临床工作流程和基于移动的诊断工具方面具有强大的潜力。未来的工作将侧重于用不同的人口统计输入扩展数据集,在实时环境中部署系统,并将其集成到基于智能手机的平台中,以实现更广泛的可访问性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SmartOralDx: A deep learning-powered system for precise classification of oral diseases from clinical imagery
The early and accurate diagnosis of oral diseases is essential for effective treatment and improved patient outcomes. This study introduces SmartOralDx, a deep learning-based diagnostic system designed to classify multiple oral disease categories from clinical imagery. The system was evaluated using various convolutional neural network (CNN) architectures, including baseline CNN, MobileNetV2, CNN + LSTM, and CNN + BiLSTM with Attention, across datasets comprising clinical and X-ray images. Initial results indicated that the inclusion of low-contrast X-ray images negatively impacted model performance. By refining the dataset to include only high-resolution clinical images and applying contrast-enhancement techniques using CLAHE, significant improvements were achieved in classification accuracy. The contrast-augmented CNN model achieved the highest testing accuracy of 94.26 %, while hybrid models incorporating temporal and attention mechanisms further enhanced interpretability and generalization, with the CNN + LSTM model reaching 90.75 % test accuracy. The study highlights the importance of data quality, augmentation, and model architecture in medical image classification and suggests that SmartOralDx has strong potential for integration into clinical workflows and mobile-based diagnostic tools. Future work will focus on expanding the dataset with diverse demographic inputs, deploying the system in real-time environments, and integrating it into smartphone-based platforms for broader accessibility.
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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
CiteScore
5.00
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0.00%
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审稿时长
187 days
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