# Prediction of Diabetes Among Homeless Adults Using Artificial Intelligence: Suggested Recommendations

**Authors:** Khadraa Mohamed Mousa, Farid Ali Mousa, Naglaa Mahmoud Abdelhamid, Mona Sayed Atress, Amal Yousef Abdelwahed, Olfat Yousef Gushgari, Fadiyah Alshwail, Rowaedh Ahmed Bawaked, Manal Mohamed Elsawy

PMC · DOI: 10.3390/healthcare14060808 · Healthcare · 2026-03-22

## TL;DR

This study uses AI to predict diabetes in homeless adults in Egypt, finding that a stacking model outperforms traditional methods and identifies key risk factors.

## Contribution

The novel contribution is the development of a hybrid stacking model that outperforms conventional classifiers for diabetes prediction in an underserved population.

## Key findings

- The stacking ensemble achieved 95.45% accuracy in predicting diabetes among homeless adults.
- Key predictors included BMI, blood pressure, and lifestyle factors.
- Ensemble learning and resampling strategies improved performance on imbalanced medical data.

## Abstract

Background: Diabetes mellitus is a global health challenge, especially among homeless people. Early prediction of diabetes can reduce treatment costs and improve interventions. This study aimed to identify predictors of diabetes among homeless adults by utilizing artificial intelligence and providing recommendations for diabetes prevention. Methods: A case-control study of 150 homeless adults in Giza, Egypt (99 diabetes cases and 51 controls), analyzed 43 variables collected through interviews and physiological measures, with missing data imputed. Feature selection using recursive feature elimination and univariate and correlation analyses reduced the predictors to 13 variables. The class imbalance was addressed using synthetic minority over-sampling on the training set. Six models and a stacking ensemble with XGBoost as a meta-learner were evaluated using 5-fold cross-validation and performance metrics, including the accuracy, precision, recall, F1-score, and AUC-ROC. Results: The key predictors included BMI, systolic blood pressure, triceps skinfold thickness, waist circumference, lifestyle factors, comorbidities, diastolic blood pressure, age, medication adherence, educational level, marital status, duration of residence, and diabetes knowledge. Individual classifiers achieved a moderate performance (accuracy: 56.7–70.0%, F1-score: 0.686–0.781). The stacking ensemble substantially outperformed individual models, achieving a 95.45% accuracy, a 100% precision, a 93.75% recall, a 0.968 F1-score, and a 0.979 AUC-ROC on the test set. Conclusions: Machine learning models can reliably predict diabetes. The proposed hybrid stacking model outperformed conventional classifiers in terms of the prediction performance, highlighting the benefits of ensemble learning and sophisticated resampling strategies in dealing with imbalanced medical data. It is recommended that healthcare institutions integrate AI-powered diagnostic assistance technology into clinical processes to aid in the early detection and treatment of diabetes.

## Linked entities

- **Diseases:** diabetes (MONDO:0005015), diabetes mellitus (MONDO:0005015)

## Full-text entities

- **Diseases:** Diabetes (MESH:D003920)

## Full text

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## Figures

3 figures with captions in the complete paper: https://tomesphere.com/paper/PMC13026630/full.md

## References

58 references — full list in the complete paper: https://tomesphere.com/paper/PMC13026630/full.md

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Source: https://tomesphere.com/paper/PMC13026630