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Accepted for/Published in: JMIR Diabetes

Date Submitted: Aug 10, 2024
Date Accepted: Apr 13, 2025

The final, peer-reviewed published version of this preprint can be found here:

The Use of AI-Powered Thermography to Detect Early Plantar Thermal Abnormalities in Patients With Diabetes: Cross-Sectional Observational Study

Alwashmi MF, Alghali M, AlMogbel A, Alwabel AA, Alhomod AS, Almaghlouth I, Temsah MH, Jamal A

The Use of AI-Powered Thermography to Detect Early Plantar Thermal Abnormalities in Patients With Diabetes: Cross-Sectional Observational Study

JMIR Diabetes 2025;10:e65209

DOI: 10.2196/65209

PMID: 40512999

PMCID: 12180681

The use of AI-powered thermography to detect early plantar thermal abnormalities in diabetic patients: a cross-sectional observational study

  • Meshari F. Alwashmi; 
  • Mustafa Alghali; 
  • AlAnoud AlMogbel; 
  • Abdullah Abdulaziz Alwabel; 
  • Abdulaziz S Alhomod; 
  • Ibrahim Almaghlouth; 
  • Mohamad-Hani Temsah; 
  • Amr Jamal

ABSTRACT

Background:

Diabetic foot problems are among the most debilitating complications of diabetes mellitus. The prevalence of diabetes mellitus and its complications, notably diabetic foot ulcers (DFUs), continues to rise, challenging healthcare despite advancements in medicine. Traditional detection methods for DFUs face scalability issues due to inefficiencies in time and practical application, leading to high recurrence and amputation rates alongside substantial healthcare costs. Human Medical Thermography presents a viable solution, offering an inexpensive, portable method without ionizing radiation, which could significantly enhance disease monitoring and detection, including DFUs.

Objective:

The purpose of this study is to evaluate the efficacy of AI-powered thermography in detecting plantar thermal patterns that differentiate between adult diabetic patients without visible foot ulcers and healthy individuals without diabetes.

Methods:

This prospective cohort validation study recruited a random sample of 200 patients; 100 patients were healthy, and the other 100 were diagnosed with diabetes but without a visible foot ulcer. Participants completed a baseline study questionnaire to gather initial data. Following this, a Research Assistant prepared participants for thermal imaging, which was conducted to capture plantar thermal patterns. All collected data, including thermal images and questionnaire responses, were stored on a password-protected computer to ensure confidentiality and data integrity.

Results:

Participants were categorized into two groups: a healthy control group (n = 98) with no prior diabetes or PAD diagnosis and normal circulatory findings, and a diabetic group (n = 98) comprising patients with diabetes, regardless of peripheral circulatory status. Analysis of both feet revealed significantly greater differences between feet in the diabetic group compared to controls (control 0.47 °C ± 0.43°C vs diabetic 1.78 °C ± 1.58 °C, p < 0.001, CI 0.99, 1.63). These results identified clinically relevant abnormalities in 10% of the diabetic cohort, whereas no such findings were observed in the control group. We used a linear regression model to indicate that being diagnosed with diabetes is a significant predictor of abnormal temperature, while age and gender were not found to be significant predictors in this model.

Conclusions:

DFUs pose a significant health risk for diabetes patients, making early detection crucial. This study highlights the potential of an AI-powered computer vision system in identifying early signs of diabetic foot complications by differentiating thermal patterns between diabetic patients without visible ulcers and healthy individuals. The findings suggest that the technology could improve early diagnosis and outcomes in diabetic foot care. Further research with larger and more diverse populations is essential to validate its effectiveness and applicability.


 Citation

Please cite as:

Alwashmi MF, Alghali M, AlMogbel A, Alwabel AA, Alhomod AS, Almaghlouth I, Temsah MH, Jamal A

The Use of AI-Powered Thermography to Detect Early Plantar Thermal Abnormalities in Patients With Diabetes: Cross-Sectional Observational Study

JMIR Diabetes 2025;10:e65209

DOI: 10.2196/65209

PMID: 40512999

PMCID: 12180681

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