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    •   BracU IR
    • School of Data and Sciences (SDS)
    • Department of Computer Science and Engineering (CSE)
    • Thesis & Report, BSc (Computer Science and Engineering)
    • View Item
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    Determining fatal heart failure risks in patients diagnosed with chronic kidney disease: a machine learning approach

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    21241097, 21241094, 18101585, 21241096_CSE.pdf (4.792Mb)
    Date
    2022-01
    Publisher
    Brac University
    Author
    Haque, Adiba
    Kabir, Anika Nahian Binte
    Islam, Maisha
    Monjur, Mayesha
    Metadata
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    URI
    http://hdl.handle.net/10361/17028
    Abstract
    The connection between heart and kidney has been medically established. The presence of a condition affecting one of the organs impairs the other. Hence, the causal associations between two of the most long-term conditions: Chronic Kidney Disease and fatality of Heart Failure are supported by the outcomes of Machine Learning techniques. The novelty of this research lies in its techniques that successfully find patterns in on of the stages of Cardiorenal Syndrome. We employed two disease datasets to perform predictive analysis with five classifiers: Random Forest, XGBoost, CatBoost, Logistic Regression and Support Vector Machine, and analyzed the feature importance scores of the models to gauge the relationship between the conditions. The top predictors in our research were Random Forest, XGBoost and CatBoost classifiers with accuracy of the models for heart failure ranging from 70% to 76% and the accuracy for CKD prediction varied from 97% to 99%. Numerous features of the top predictors of HF and CKD were shared such as serum creatinine and diabetes. Individually, the CKD dataset ranked highest importance for haemoglobin levels, the imbalance of which causes anemia, and anemia is a key component in the HF dataset. The results of the visualization techniques of ML also yielded outcomes that were medically sound. This analysis of the physiological attributes and their importance with the help of machine learning, aided in successfully reaffirming the medical findings of a crucial stage of Cardiorenal syndrome.
    Keywords
    Cardiorenal; Feature importance; Cardiovascular disease; Chronic kidney disease
     
    LC Subject Headings
    Machine learning
     
    Description
    This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science, 2022.
     
    Cataloged from PDF version of thesis.
     
    Includes bibliographical references (pages 32-35).
    Department
    Department of Computer Science and Engineering, Brac University
    Type
    Thesis
    Collections
    • Thesis & Report, BSc (Computer Science and Engineering) [1594]

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