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摘要

背景:及时诊断乳头水肿对于避免视力丧失和危及生命的疾病发展至关重要。在急诊科和农村保健中心,没有专业的眼科医生或神经科医生可以及时发现。一个智能的、非侵入性的检测系统可以帮助医疗保健专业人员检测乳头状水肿,并对神经系统患者进行分类,这对于早期诊断至关重要,可以挽救视力甚至生命。方法:视网膜眼底图像用于识别乳头状水肿。在对数据进行适当的预处理后,可以使用训练好的卷积神经网络对图像进行分类,以检测乳头水肿。我们提出的模型使用effentnet - b3使用图像数据集准确有效地检测乳头水肿。结果:使用effentnet - b3模型,准确率达到98.54%。其他性能指标也明显高于现有文献。结论:智能乳头水肿检测仪对急诊科和农村卫生院早期发现乳头水肿有一定的帮助。获得的结果非常令人鼓舞,尽管使用来自各种来源的更多数据进行训练将有助于提高系统的实际可用性。使用带有镜头组件的智能手机进行拍摄的新兴趋势也可以作为进一步的工作。
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Intelligent Papilledema Detector (IPD)
Background: Timely diagnosis of papilledema is essential to avoid vision loss and progress of life threatening conditions. Expert ophthalmologists or neurologists are not available in Emergency departments and in rural healthcare centers for timely detection. An intelligent, non-invasive detection system to aid healthcare professionals to detect papilledema and triage neurological patients is essential for early diagnosis for saving vision & even livesMethodology: Retinal fundus images are used to identify papilledema. After suitable preprocessing of the data, trained Convolutional Neural Networks can be used to classify the images to detect papilledema. Our proposed model uses EfficientNet-B3 to accurately and efficiently detect papilledema using an image dataset.Results: Accuracy of 98.54% is achieved with the EfficientNet-B3 model. Other performance metrics are also significantly higher than existing literature.Conclusion: The Intelligent Papilledema Detector will be very helpful in emergency departments and rural healthcare centers to aid with early detection of papilledema. The results obtained are very encouraging, though training with more data from various sources will help improve the practical usability of the system. Emerging trends of using smartphones with a lens assembly to capture also can be taken up as further work.
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