机器学习应用于肺部MRI图像预测患者的严重程度

Rashmi Jha, Gaurav Kunwar
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引用次数: 0

摘要

肺癌一再被证明是人类历史上最致命的疾病之一。此外,它是所有癌症中最普遍和最致命的。肺癌病例正在迅速上升。在印度,每年大约有7万例。由于这种情况在早期阶段往往是无症状的,因此几乎不可能识别。正因为如此,早期癌症识别对于挽救生命至关重要。早期诊断可能会使病人有更好的康复和治愈的机会。有效的癌症检测在很大程度上得益于技术。根据他们的发现,许多研究人员提出了各种方法。最近,各种计算机辅助诊断(CAD)方法和系统已经被提出、开发和启动,以努力利用计算机技术来应对这一挑战。有多种方法使用基于图像处理的方法来预测癌症的恶性程度,这些系统除了使用深度学习技术外,还使用各种机器学习技术,如ResNet 50和DenseNet169, ResNet 50的准确率为98.69,DenseNet169的准确率为99.67。本研究的目的是列出、讨论、对比和分析几种图像分割、特征提取和其他方法,以分类和识别早期肺癌。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting the Patient’s Severity Using Machine Learning Applied to Lungs MRI Images
Lung cancer has repeatedly shown itself to be one of the most fatal illnesses in the history of mankind. Additionally, it is among the most prevalent and deadly between all cancers. Lung cancer cases are rising quickly. In India, there are roughly 70,000 instances per year. Since the condition tends to be asymptomatic in its early stages, it is almost impossible to identify. Because of this, early cancer identification is crucial to preserving lives. A patient may have a better chance of recovery and cure with an early diagnosis. Effective cancer detection is greatly aided by technology. On the basis of their findings, numerous researchers have suggested various methodologies. Recently, various computer-aided diagnostic (CAD) methodologies and systems have been proposed, developed, and launched in an effort to employ computer technology to address this challenge. There are multiple ways using image processing-based methods to forecast the malignancy level for cancer, and those systems use a variety of machine learning techniques in addition to deep learning techniques, like ResNet 50 and DenseNet169 got accuracy 98.69 of ResNet 50 and 99.67 of DenseNet169. The purpose of this study is to list, debate, contrast, and analyse several methods of image segmentation, feature extraction, and other methodologies to classify and identify lung cancer in its early stages.
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