Md. Shohidul Islam Polash, Shazzad Hossen, Rahmatul Kabir Rasel Sarker, Md. Atik Bhuiyan, A. Taher
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引用次数: 3
摘要
胃癌是一种奇怪的细胞发展,始于胃。它可被称为胃癌,可影响胃的任何一块。在整个宇宙中,恶性胃发育是第五种驱动疾病,也是第三种驱动死亡的理由。在被确定患有恶性肿瘤后,医生决定病人的生存机会和他们能活多久。医生通常根据他以前看病人的经验来估计病人的寿命;在某些情况下,估计是错误的。但在机器学习的帮助下,可以非常准确地做出这个假设。通常,个人将这些问题视为回归问题。我们已经展示了多类分组是如何安排的。此外,SEER数据集指导我们的郊游。我们建立的模型可以预测胃癌患者的生存期。来自SEER的异常影响特征有助于ML方法。这些高特征提供给八种不同的分类算法:Extra tree, Random Forest, Bagging, Gradient Boost, LightGBM, XGBoost Decision tree和HGB。Extra Tree Classifier预测存活时间的准确率为97.27%。这些模式将彻底改变医生的医疗管理。
Functionality Testing of Machine Learning Algorithms to Anticipate Life Expectancy of Stomach Cancer Patients
Stomach Cancer is a strange development of cells that starts in the stomach. It can be called gastric cancer and can influence any stomach piece. All over the universe, malignant stomach development is the fifth -driving sort of disease and the third driving justification for death from threat. After being determined to have malignant growth, the doctor determines the patient's chances of survival and how long they can survive. The doctor usually estimates lifespan from his previous patient seeing experience; in some cases, estimation is wrong. But with the assistance of machine learning, it is possible to make this assumption very accurately. Typically individuals tackle these issues as regression issues. We have shown how the arrangement is conceivable with multiclass grouping. Moreover, the SEER data set guides us in our outing. Our created model can predict the sur-vival period of Stomach cancer patients. Exceptionally affected characteristics from SEER helped in the ML approaches. These high features feed to eight different classification algorithms: Extra tree, Random Forest, Bagging, Gradient Boost, LightGBM, XGBoost Decision tree, and HGB. The Extra Tree Classifier can predict the survival time with 97.27 % accuracy. These models will revolutionize the medical management of doctors.