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Active NON-SBIR/STTR RPGS NIH (US)

Image-based algorithms for remote cesarean surgical site infection diagnoses in diverse populations

$7.42M USD

Funder EUNICE KENNEDY SHRIVER NATIONAL INSTITUTE OF CHILD HEALTH & HUMAN DEVELOPMENT
Recipient Organization Harvard Medical School
Country United States
Start Date Aug 15, 2024
End Date May 31, 2029
Duration 1,750 days
Number of Grantees 1
Roles Principal Investigator
Data Source NIH (US)
Grant ID 10979935
Grant Description

Project Summary/Abstract Post-cesarean surgical site infections (SSIs) contribute to maternal morbidity and mortality globally; as rates of cesarean delivery increase, so will the number of SSIs. Timely SSI diagnosis and treatment can improve maternal outcomes. However, in many settings, particularly in rural areas, postoperative wound monitoring is

challenging due to physical and financial barriers. The overall goal of this proposal is to improve strategies for post-cesarean SSI monitoring by validating and updating two existing image-based diagnostic algorithms. The original algorithms were trained on image-SSI diagnosis dyads collected on women delivering via cesarean in rural Rwanda. One algorithm, using visible

images (photographs), had a 83% sensitivity and 75% specificity. The second algorithm, using thermal images, had 95% sensitivity and 84% specificity. In this proposed research, we will prospectively follow 6,000 women in Rwanda, Ghana and Mexico (2,000 per site) and collect wound images and SSI diagnoses at postoperative day (POD) 10. These sites were chosen

because of: a) high SSI rates; b) the potential to integrate an accurate SSI diagnostic algorithm into existing community health worker follow-up programs; and c) the diversity in skin tones across the study sites. Using this data, we will assess the generalizability of the existing visible image and thermal image algorithms, evaluating

the sensitivity and specificity overall and by country (Aim 1). We will then retrain the algorithm to improve predictive properties across diverse populations, and we will explore adding clinical data to the algorithms to improve accuracy (Aim 2). Finally, for a subset of 1,200 women who are SSI negative at POD10, we will

reevaluate at POD20 and POD30, and use these image-SSI diagnosis dyads to explore the need for later SSI monitoring and the ability to predict delayed SSIs with images captured at POD10 (Aim 3). The culmination of this research will provide strategies for home-based monitoring of cesarean-related SSIs that

can accommodate a range of skin tones.

All Grantees

Harvard Medical School

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