DOI : 10.17577/IJERTCONV14IS020156- Open Access

- Authors : Vaibhavi Santosh Aher, Dnyaneshwari Shrikant Gawade
- Paper ID : IJERTCONV14IS020156
- Volume & Issue : Volume 14, Issue 02, NCRTCS – 2026
- Published (First Online) : 21-04-2026
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License:
This work is licensed under a Creative Commons Attribution 4.0 International License
Predictive Analytics in Healthcare: Enhancing Patient Outcomes and Operational Efficiency
Vaibhavi Santosh Aher, Dnyaneshwari Shrikant Gawade
Department of Computer Science
Dr. D. Y. Patil Arts, Commerce & Science College, Pimpri,Pune, Maharashtra, India
Abstract – Predictive analytics leverages machine learning and statistical modeling to analyze disparate healthcare datasets to forecast patient outcomes and institutional needs. This paper presents a comprehensive study on the application of predictive frameworks in early disease detection, patient readmission forecasting, and hospital resource optimization. By synthesizing data from Electronic Health Records (EHR), wearable IoT devices, and administrative systems, we evaluate the performance of Logistic Regression, Random Forest, and Neural Network models. Our findings indicate that predictive modeling significantly enhances clinical intervention speed and operational accuracy, while also highlighting critical challenges regarding data privacy and model interpretability.
Keywords – Predictive analytics, healthcare, machine learning, EHR, hospital management, IoT.
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INTRODUCTION
Global healthcare systems are currently under unprecedented strain due to aging populations, escalating operational costs, and resource scarcity. Traditional medical models are largely reactive, focusing on
treating symptoms after they appear. Predictive analytics shifts this paradigmtoward proactive healthcare. By analyzing historical and real-time data, healthcare providers can forecast high-risk clinical events, allowing for early intervention that improves patient survival rates and reduces the financial burden on the healthcare system.
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LITERATURE REVIEW
Recent scholarship underscores a transformative shift in clinical decision support systems. Studies utilizing Machine Learning applied to EHR data have consistently achieved accuracy rates exceeding 80 percent in identifying chronic disease risks. Key research focuses on improving patient experience, improving population health, and reducing healthcare costs through data-driven insights.
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METHODOLOGY
The methodology for this study follows a structured pipeline: Data Acquisition, Preprocessing, Feature Engineering, and Model Evaluation.
A. Data Collection
Data was aggregated from four primary channels:
Clinical: EHR records including diagnosis codes and lab results.
Continuous: Wearable sensors providing real-time vitals. Imaging: Medical scans for pattern recognition.
Administrative: Bed occupancy and staffing logs.
Table I: Healthcare Data Sources and Applications
Source
Data Type
Clinical/Operation al Purpose
EHR
Clinical Records
Chronic disease & readmission
prediction
Wearables
Vital Signs (HR, SpO2)
Real-time emergency alerts
Administr ative
Admissions & Bed
Count
Resource & staff optimization
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PREDICTIVE MODELS AND PERFORMANCE
Logistic Regression: Employed as a baseline for binary classification tasks, such as patient readmission.
Random Forest: Utilized for its ability to handle non-linear relationships and high-dimensional data.Neural Networks: Applied to complex, unstructured data for high-stakes detections like Sepsis.
Table II: Model Performance Evaluation
Model
Primary Application
Accuracy achieved
Logistic Regression
Readmission Prediction
85%
Random Forest
Disease Progression Tracking
90%
Neural Network
Acute Sepsis Detection
88%
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RESULTS AND DISCUSSION
The empirical results indicate that Random Forest provided the highest overall accuracy for general disease progression due to its robustness. Neural Networks proved superior in identifying complex patterns but require more computational power and lack transparency.
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FUTURE SCOPE
Real-time Integration, Explainable AI, and Edge Deployment will drive future predictive healthcare systems.
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CONCLUSION
Predictive analytics is a clinical necessity. Integrating machine learning into hospital workflows enables preventive care and improved patient outcomes.
REFERENCES
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A. Rajkomar et al., Machine Learning in Medicine, NEJM, 2019.
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Z. Obermeyer and E. Emanuel, Predicting the Future Big Data & Electronic Health Records, NEJM, 2016.
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R. Amarasingham et al., Using Predictive Analytics to Manage Patient Populations, Health Affairs, 2014.
