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Enterprise AI Analysis: An artificial neural network approach for predicting infant mortality status in Ethiopia

Enterprise AI Analysis

Predicting Infant Mortality with Deep Learning in Ethiopia

Leveraging advanced Artificial Neural Networks, this analysis provides a robust predictive model for infant mortality status, identifying critical risk factors and informing targeted public health interventions in resource-scarce settings.

Executive Impact & Key Findings

Our deep learning model demonstrates superior predictive capabilities for infant mortality, offering actionable insights for healthcare policy and resource allocation.

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0 Key Risk Factors Identified
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Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

96.2% Accuracy in Predicting Infant Mortality

The ANN model achieved an impressive 96.2% accuracy in predicting infant mortality status, demonstrating its robust performance across unseen data.

ANN vs. Traditional Models

Model Accuracy (%) Recall (Mortal) (%) AUC
Artificial Neural Network (Proposed) 96.2 94.0 0.99
Gradient Boosting 93.5 87.0 0.95
Random Forest 92.3 85.5 0.94
Logistic Regression 89.5 81.0 0.91
Decision Tree 88.7 80.2 0.89

Enterprise Process Flow

Data Collection (EDHS 2019)
Feature Extraction (16 Significant Features)
Missing Value Handling (Deletion & Imputation)
Data Splitting (70% Train, 20% Validate, 10% Test)

Effective data preprocessing was crucial for preparing the EDHS dataset, involving careful handling of missing values and selection of key predictors, ensuring the model's reliability.

Critical Factors in Infant Mortality

The study identified several key predictors influencing infant mortality. Infant age (months) was the most influential, with younger infants having a higher risk. Maternal age and birth order also showed significant impact, with younger/older mothers and higher birth orders increasing risk. Socio-economic factors like household size and wealth index, along with place of delivery (home vs. institutional), were moderately associated with mortality risk. Maternal education, sanitation facilities, and breastfeeding status were also considered.

Calculate Your Potential AI ROI

Estimate the efficiency gains and cost savings your enterprise could achieve by implementing similar AI solutions.

Estimated Annual Savings $0
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Your AI Implementation Roadmap

A typical enterprise AI journey with us involves these key phases, tailored to your specific needs and infrastructure.

Phase 01: Discovery & Strategy

In-depth analysis of your current operations, data landscape, and strategic objectives. We identify key problem areas where AI can deliver maximum impact.

Phase 02: Data Preparation & Model Development

Collecting, cleaning, and structuring relevant data. Our AI specialists design, train, and validate custom models using state-of-the-art deep learning techniques.

Phase 03: Integration & Deployment

Seamless integration of the AI model into your existing systems and workflows. Rigorous testing ensures performance and stability in a live environment.

Phase 04: Monitoring & Optimization

Continuous monitoring of model performance, identifying areas for improvement, and iterative optimization to ensure sustained value and adaptability.

Phase 05: Scalability & Future Innovations

Planning for future expansion and new AI initiatives. We help you build an internal AI capability, ensuring long-term success and competitive advantage.

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