Prediction of Health Care Data Using Efficient Machine Learning Algorithms

Abstract

Every clinical decision relies on the doctor's expertise and comprehension.This standard procedure may, despite appearances, lead to errors, biases, and increased costs that compromise the patients' Quality of Service (QoS).There is a pressing need for adaptable equipment for critical patient care in developing nations like India.The majority of Indian hospitals are unable to provide their patients with adequate medical care due to a lack of suitable, simple, and expandable intelligent systems.The development of a comprehensive system that will enable hospitals to provide vital patients with a real-time feedback system is the objective of this project.Using IBM cloud computing as a service platform and machine learning, we propose a standard architecture, language, and classification scheme for analyzing vital patient health data (PaaS).The development of a machine learning (ML) method for predicting a patient's fitness is the primary goal of this study.Our models and data are stored and managed by IBM Watson Studio and IBM Cloud.The Base Predictors for our ml models are Nave Bayes, Logistic Regression, the KNeighbors Classifier, the Decision Tree Classifier, the Random Forest Classifier, the Gradient Boosting Classifier, and the MLP Classifier.The precision of the model has been increased by employing the ensemble learning bagging strategy.We use a variety of machine learning algorithms for ensemble learning.The Critical Patient Management System, or CPMS, is a mobile application we developed that allows for real-time data and record viewing.Data that is relevant to ML model training and deployment can be fetched in real time from IBM Cloud and made available through CPMS because of the way the system is built.Doctors can use Ml tendencies to predict a patient's health status.The CPMS will send an SMS notification to the duty physician and nurse to provide immediate care if the situation worsens as anticipated.Hospitals might get a smart healthcare solution if the mission, milliliter models, and mobile application are combined.

Authors and Affiliations

Dr. Pathan Husain Basha, Dr. K. Sivaram Pradasad, S. Visweswar Rao, J. Krishna Kishore, T. R. Chaithanya, G. Subba Rao

Keywords

Related Articles

A Study of Goodness –of- Fit Tests for Some Discrete Probability Distribution

This paper presents the goodness of fit (GOF) tests for several discrete distributions viz., Poisson, Generalized Poisson and Negative binomial distribution. Parameter estimation is performed and goodness of fit test for...

Improved HMM by Deep Learning for Ear Classification

Ear recognition is one of the most relevant applications of image analysis. It’s a true challenge to build an automated system which exceeds human ability to recognize ears. Humans do not identify the ears ordinarily, so...

Behavior of Plastic Working in Oil-Field Equipment

Researches were made for the purpose of increase of labor productivity and replace of nonferrous metals and ferrous metals by plastics. Details for this purpose are selected with a certain characteristic that further the...

An Area and Speed Efficient Square Root Carry Select Adder Using Optimized Logic Units

Adder is an inevitable circuit in any of the VLSI Designs. Since, the arithmetic operations such as subtraction, multiplication and division depends on the operation of addition, adder is dubbed as heart of any Digital S...

A Review Study on Medicinal Properties of Psidium Guajava

Guava is a plant local to Tropical America and one of the most well-known in the Myrtaceae family. In contrast with different organic products, guava is untreated with synthetic compounds, making it a better choice. It h...

Download PDF file
  • EP ID EP746991
  • DOI 10.55524/ijircst.2022.10.1.25
  • Views 23
  • Downloads 0

How To Cite

Dr. Pathan Husain Basha, Dr. K. Sivaram Pradasad, S. Visweswar Rao, J. Krishna Kishore, T. R. Chaithanya, G. Subba Rao (2022). Prediction of Health Care Data Using Efficient Machine Learning Algorithms. International Journal of Innovative Research in Computer Science and Technology, 10(1), -. https://europub.co.uk/articles/-A-746991