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2.9.3  Stroke Disease Detection and Prediction Using Robust


                                Learning Approaches



                               The  study  focuses  on  the  development  of  a  machine  learning  model  for
                               predicting strokes based on physiological variables. The researchers used the

                               stroke prediction dataset which is the same as the dataset that will be use from
                               this  project,  which  had  5110  rows  and  12  columns.  The  dataset  was

                               imbalanced, with 249 rows indicating a stroke risk and 4861 rows indicating

                               no stroke risk. Figure 2.17 illustrates the proposed block diagram for this work.


































                                                Figure 2.17 Proposed block diagram for the project
                                                          (Source: Tazin et al., 2022)


                               The researchers employed four machine learning algorithms: Random Forest

                               (RF),  Decision  Tree,  Voting  Classifier,  and  Logistic  Regression.  They
                               performed data preprocessing, including handling null values, label encoding,

                               and balancing the dataset. The models were trained using an 80:20 ratio of
                               training to testing data.






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