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Active NON-SBIR/STTR RPGS NIH (US)

Lung Ultrasound and Artificial Intelligence Technology for the Diagnosis of TB in LMICs

$6.75M USD

Funder NATIONAL HEART, LUNG, AND BLOOD INSTITUTE
Recipient Organization Johns Hopkins University
Country United States
Start Date Feb 15, 2024
End Date Jan 31, 2029
Duration 1,812 days
Number of Grantees 2
Roles Co-Investigator; Principal Investigator
Data Source NIH (US)
Grant ID 10803802
Grant Description

Project Summary Improved point-of-care tests and diagnostic algorithms for tuberculosis (TB) are urgently needed to enable more timely and accurate diagnosis. Currently, lack of diagnosis and diagnostic delays are significant contributors to increased mortality [1,2,3] in low and middle-income countries (LMICs), due to reliance on insensitive, slow

and/or locally inappropriate tests and limited access to optimal diagnostic modalities. Fortunately, rapid advances in diagnostic imaging technology have produced affordable, portable, point-of-care ultrasound devices that can be transported with exceptional ease to resource-limited settings. Lung ultrasound (LUS) is now regularly used

to accurately diagnose a variety of pulmonary disorders including pneumonia and pulmonary edema. Our preliminary studies have demonstrated 96% sensitivity of LUS for detecting associated sonographic abnormalities in patients with microbiologically confirmed pulmonary tuberculosis (PTB).5 However, there remain

barriers to implementing LUS for TB diagnosis, including a scarcity of robust data about ideal training and scanning procedures. Our overall goal is implementation of real-time AI-facilitated LUS for timely evaluation of people with TB-suspected symptoms to triage who needs further evaluation and testing. Our preliminary data

suggest LUS may be highly sensitive for the diagnosis of PTB, but no rigorous, adequately powered studies have investigated lung ultrasound findings in patients with PTB versus controls without PTB. To address these critical information gaps, we aim to: Aim 1. Develop a LUS model for PTB detection as a triage tool for PTB diagnosis which can be used in

field settings in low-resource and remote areas. Hypothesis: LUS will have similar or better sensitivity for diagnosis of PTB compared to CXR with moderate (i.e., 70-80%) specificity when interpreted by trained personnel and validated by experts. Aim 2. Develop and test an artificial intelligence (AI) algorithm for detecting PTB by LUS that does not

require trained personnel for use in LMICs. Hypothesis: An AI algorithm based on convolutional neural networks (CNNs) will classify LUS features indicative of PTB with high sensitivity (90)% vs. the reference standard of microbiological testing. This study will leverage resources and expertise among partners in the United States and Peru. Our

multidisciplinary research team at the Universidad Peruana Cayetano Heredia (UPCH), the Peruvian NGO A.B. PRISMA, and the Johns Hopkins University have a strong track record of collaborative work in novel research projects in resource-poor settings, including TB and LUS. The use of portable AI-augmented LUS could save

lives in resource-limited settings by decreasing time to case detection and treatment initiation.

All Grantees

Johns Hopkins University

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