Abstract

We attempt to predict the accidental fall of human beings due to sudden abnormal changes in their health parameters such as blood pressure, heart rate, and sugar level. In medical terminology, this problem is known as Syncope. The primary motivation is to prevent such falls by predicting abnormal changes in these health parameters that might trigger a sudden fall. We apply various machine learning algorithms such as logistic regression, a decision tree classifier, a random forest classifier, K-Nearest Neighbours (KNN), a support vector machine, and a naive Bayes classifier on a relevant dataset and verify our results with the cross-validation method. We observe that the KNN algorithm provides the best accuracy in predicting such a fall. However, the accuracy results of some other algorithms are also very close. Thus, we move one step further and propose an ensemble model, Majority Voting, which aggregates the prediction results of multiple machine learning algorithms and finally indicates the probability of a fall that corresponds to a particular human being. The proposed ensemble algorithm yields 87.42% accuracy, which is greater than the accuracy provided by the KNN algorithm.

Highlights

  • It has been studied that, as the age of a person increases, the chance of an accidental fall increases

  • We found two works where the authors used a dataset, provided by the Armed Forces Institute of Cardiology (AFIC) and the National Institute of Heart Disease (NIHD). is dataset is based on real case studies and consists of only 75 data points

  • We evaluate all algorithms using certain parameters and select the best one in terms of accuracy of predicting sudden human falls due to abnormal health condition. e original dataset consists of the following attributes: (1) ACTIVITY, (2) TIME, (3) SL, (4) EEG (EEG monitoring rate), (5) blood pressure (BP), (6) HR, and (7) CIRCULATION. e activities considered in the dataset are standing, walking, sitting, falling, cramps, and running

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Summary

Introduction

It has been studied that, as the age of a person increases, the chance of an accidental fall increases. In 2019, the total global number of persons aged 65 years or more was 703 million, 9% of the total population. As predicted by the United Nations Department of Economic and Social Affairs in their report “World Population Ageing 2019: Highlights,” one in six people in the world will be aged 65 years or older by 2050, in place of the present ratio of one in eleven. In the 1980s, the probability of surpassing the age of 65 was less than 50% It has become more than 90% in countries with very high life expectancy.

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