Analysis of Idiopathic Pulmonary Fibrosis through Machine Learning Techniques

Upasana Chutia, Anand Shanker Tewari, Jyoti Prakash Singh
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引用次数: 1

Abstract

Few diseases are hard to detect and life-threatening as well, and Pulmonary Fibrosis (PF) is one of them. PF is a chronic disorder that leads to progressive scarring of the lungs, and we can say that PF is Idiopathic Pulmonary Fibrosis (IPF) because the cause of the disease is unknown. 50,000 fresh cases per year are diagnosed with PF, which is likely to increase. With machine learning and deep learning, we can predict the lung function decline of a patient suffering from IPF. This prediction will improve the medication process and will increase the longevity of the patient. Early detection of IPF is crucial as it increases the morbidity and mortality rate and healthcare costs. We have predicted IPF in the early stages using forced vital capacity (FVC) records of different patients. FVC is the amount of air that we can exhale from our lungs after taking a deep breath. We have created a Multiple-Quantile Regression model to detect a decline in lung function using CNN. With this approach, the cross-validation accuracy of prediction is 92 percent.
利用机器学习技术分析特发性肺纤维化
很少有疾病是难以发现和危及生命的,肺纤维化(PF)就是其中之一。PF是一种导致肺部进行性瘢痕形成的慢性疾病,我们可以说PF是特发性肺纤维化(IPF),因为这种疾病的病因尚不清楚。每年有50,000个新病例被诊断为PF,这一数字可能会增加。通过机器学习和深度学习,我们可以预测IPF患者的肺功能衰退。这一预测将改善用药过程,延长患者的寿命。早期发现IPF至关重要,因为它会增加发病率和死亡率以及医疗保健费用。我们利用不同患者的用力肺活量(FVC)记录预测了早期IPF。FVC是我们深呼吸后从肺部呼出的空气量。我们使用CNN创建了一个多分位数回归模型来检测肺功能的下降。通过这种方法,预测的交叉验证准确率为92%。
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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