公共卫生领域肺癌早期检测的进展:利用机器学习算法和预测模型的综合研究

Mohammad Shafiquzzaman Bhuiyan, Imranul Kabir Chowdhury, Mahfuz Haider, Afjal Hossain Jisan, Rasel Mahmud Jewel, Rumana Shahid, Mst Zannatun Ferdus
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引用次数: 0

摘要

肺癌是导致美国人死亡的主要原因,这是因为肺部自发生长的恶性肿瘤会转移到身体其他部位,造成严重威胁。值得注意的是,吸烟是造成肺部问题并最终导致肺癌的主要外部因素。然而,早期检测是预防这种致命疾病的关键策略。利用机器学习,我们希望开发出能够在肺癌萌芽阶段预测肺癌的强大算法。事实证明,这样的模型可以帮助医生在诊断过程中做出明智的决定,确定患者是否需要进行强化诊断或标准诊断。这种方法有可能大大降低治疗成本,因为医生可以根据准确的预测量身定制治疗方案,从而避免不必要的昂贵干预。我们的目标是建立一个能准确预测疾病的可持续模型,我们的研究结果表明,XGBoost 的表现优于其他模型,准确率高达 96.92%,令人印象深刻。相比之下,LightGBM、AdaBoost、逻辑回归和支持向量机的准确率分别为 93.50%、92.32%、67.41% 和 88.02%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advancements in Early Detection of Lung Cancer in Public Health: A Comprehensive Study Utilizing Machine Learning Algorithms and Predictive Models
Lung cancer stands as the leading cause of death in the United States, attributed to factors such as the spontaneous growth of malignant tumors in the lungs that can metastasize to other parts of the body, posing severe threats. Notably, smoking emerges as a predominant external factor contributing to lung problems and ultimately leading to lung cancer. Nevertheless, early detection presents a pivotal strategy for preventing this lethal disease. Leveraging machine learning, we aspire to develop robust algorithms capable of predicting lung cancer at its nascent stage. Such a model could prove instrumental in aiding physicians in making informed decisions during the diagnostic process, determining whether a patient necessitates an intensive or standard level of diagnosis. This approach holds the potential to significantly reduce treatment costs, as physicians can tailor the treatment plan based on accurate predictions, thereby avoiding unnecessary and costly interventions. Our goal is to establish a sustainable model that accurately predicts the disease, and our findings reveal that XGBoost outperformed other models, achieving an impressive accuracy level of 96.92%. In comparison, LightGBM, AdaBoost, Logistic Regression, and Support Vector Machine achieved accuracies of 93.50%, 92.32%, 67.41%, and 88.02%, respectively.
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