在用于结核病分类的卷积神经网络上实施迁移学习

Adya Zizwan Putra, Reynaldi Prayugo, Rizki Mudrika Alfanda Siregar, Rizky Syabani, Allwin M. Simarmata
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引用次数: 0

摘要

肺结核(TB)是一种对肺部有严重影响的传染病,是全球十大死亡原因之一。这种疾病是由于咳嗽或打喷嚏时结核分枝杆菌通过空气传播引起的。如果不进行治疗,肺结核可导致永久性肺损伤,并可危及生命。准确和早期诊断对于有效治疗和控制该疾病至关重要。挑战在于从肺部图像中对肺结核进行准确分类,这对于及时诊断和治疗至关重要。传统的诊断方法耗时长,有时还不够精确。为解决这一问题,本研究旨在通过迁移学习方法,利用卷积神经网络(CNN)算法实现结核病分类的高准确性。通过利用受肺结核影响的肺和正常肺的视觉图像,我们提出了一种利用先进的深度学习技术提高诊断准确性的解决方案。这种方法不仅加快了诊断过程,还提高了肺结核检测的可靠性,最终有助于改善患者预后和更有效地管理疾病。应用的数据集包括两个标签:肺结核和正常。该数据集包含 4200 张肺结核患者和正常肺部患者的肺部图像。研究发现,ResNet50 模型的准确率最高,达到 99%,其次是 InceptionV3,为 97%,最后是 DenseNet121,为 91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation Transfer Learning on Convolutional Neural Network for Tubercolosis Classification
Tuberculosis (TB) is an infectious disease that can have serious effects on the lungs and is among the top 10 causes of death worldwide. This disease is caused by the transmission of Mycobacterium tuberculosis bacteria through the air when coughing or sneezing. Without treatment, pulmonary tuberculosis can result in permanent lung damage and can be life-threatening. Accurate and early diagnosis is crucial for effective treatment and control of the disease.The challenge lies in the accurate classification of tuberculosis from lung images, which is essential for timely diagnosis and treatment. Traditional diagnostic methods can be time-consuming and sometimes lack precision. To address this issue, this research aims to achieve high accuracy in classifying tuberculosis using the Convolutional Neural Network (CNN) algorithm through transfer learning methods. By utilizing visual images of tuberculosis-affected and normal lungs, we propose a solution that leverages advanced deep learning techniques to enhance diagnostic accuracy. This approach not only expedites the diagnostic process but also improves the reliability of tuberculosis detection, ultimately contributing to better patient outcomes and more effective disease management. The dataset applied consists of two labels: tuberculosis and normal. This dataset contains 4200 lung images of individuals with tuberculosis and normal lungs. By applying the transfer learning method, Transfer learning is a machine learning method where a pre-trained model is used as the starting point for a new, related task. it was found that the ResNet50 model achieved the highest accuracy at 99%, followed by InceptionV3 at 97%, and lastly, DenseNet121 at 91%.
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