Challenges of CAD for thorax diseases including Covid-19 by using artificial intelligence

P. Kumar, A. Srinivasacharyulu, Munipraveena Rela, B. Krishnaveni, S. Gopalakrishna
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Abstract

Artificial Intelligence(AI) is simulation of human intelligence in machines. It is programmed such that it can think as human and perform actions or take appropriate decision. In current covid-19 pandemic, its important to diagnosis more asymptomatic people to save their life. There various diseases related to thorax such as pneumonia, lung cancer, COPD(Chronic Obstructive Pulmonary Disease). Its leading death cause in world. Even fetus are also effected by pneumonia from birth times. The remote area people also can be saved by proper diagnosis on time by using CAD(Computer Assisted Detection). There is some challenges in training of algorithm in AI to give more accuracy. In this paper those issues such as class imbalance, multi task and data size are discussed with solutions for each problem. Different diseases, which look similar by radiologist can be detected in early stage. The pre-processing and finetuning of thorax x-ray is done before applying to CNN(convolutional neural network). Loss functions are calculated with proper weightage value. So that algorithm work even in small training set. © 2021 Author(s).
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利用人工智能对包括Covid-19在内的胸腔疾病进行CAD的挑战
人工智能(AI)是人类智能在机器中的模拟。它被编程为可以像人类一样思考,并执行行动或做出适当的决定。在当前新冠肺炎大流行中,诊断出更多无症状患者以挽救他们的生命至关重要。与胸腔有关的疾病有肺炎、肺癌、慢性阻塞性肺疾病等。它是世界上最大的死亡原因。甚至胎儿也会从出生时就感染肺炎。利用计算机辅助检测技术,及时进行正确的诊断,也可以挽救边远地区的生命。人工智能算法的训练在提高准确率方面存在一些挑战。本文讨论了类不平衡、多任务和数据量等问题,并给出了相应的解决方案。不同的疾病,在放射科医生看来是相似的,可以在早期发现。在应用于CNN(卷积神经网络)之前,对胸部x射线进行预处理和微调。用适当的权重值计算损失函数。所以这个算法即使在很小的训练集上也是有效的。©2021作者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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