在机器学习模型上对白血病(癌症)患者进行渐进式分析和预测-阿波罗医院认证

Kamel Alikhan Siddiqui, K. Fatima, Ali Hasan Khan, Mr. Sibghatullah
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摘要

摘要描述了一种用于预测癌症白血病患者预后的机器学习模型。该模型基于分析患者数据,如年龄、性别、诊断、实验室结果、治疗史和先前的住院情况。该模型采用随机森林和梯度增强等监督学习技术来生成生存概率的预测。此外,该模型使用特征工程来识别重要特征并降低数据中的噪声。使用接收器工作特性曲线下的面积(AUC)和其他指标来评估该模型。结果表明,该模型具有较好的预测精度,可用于识别高危患者,指导临床决策。该项目的目标是为印度白血病患者的诊断和预后开发一个机器学习模型。该模型将对患者数据进行渐进式分析,以确定与白血病相关的特征,包括遗传标记、环境暴露、生活方式因素和人口统计信息。利用这些信息,该模型将用于准确预测印度患者患白血病的风险。此外,该模型将用于为白血病患者确定最有效的治疗方法,并监测疾病进展。最后,该模型将评估其准确性和有效性在临床设置。
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Progressive Analysis and Predictions of Leukemia (Cancer) Patients on a Machine Learning Model- The APPOLLO Hospitals Accredited
This abstract describes a machine learning model for predicting the prognosis of cancer patients with leukemia. The model is based on analyzing patient data such as age, gender, diagnosis, lab results, treatment history, and prior hospitalizations. The model employs supervised learning techniques such as random forests and gradient boosting to generate predictions of survival probabilities. Additionally, the model uses feature engineering to identify important features and reduce noise in the data. The model is evaluated using the area under the receiver operating characteristic curve (AUC) and other metrics. The results indicate that the model has good predictive accuracy and can be used to identify high-risk patients and guide clinical decisions. The goal of this project is to develop a machine learning model for the diagnosis and prognosis of leukemia in Indian patients. The model will use a progressive analysis of patient data to identify the characteristics associated with leukemia, including genetic markers, environmental exposures, lifestyle factors, and demographic information. Using this information, the model will be used to accurately predict the risk of developing leukemia in Indian patients. Additionally, the model will be used to identify the most effective treatments for those diagnosed with leukemia and to monitor the disease progression. Finally, the model will be evaluated for its accuracy and effectiveness in a clinical setting.
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