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Completed NON-SBIR/STTR RPGS NIH (US)

Automated Sonographic Detection of Pulmonary Embolism Using Machine Learning Algorithm

$3M USD

Funder NATIONAL INSTITUTE OF BIOMEDICAL IMAGING AND BIOENGINEERING
Recipient Organization University of Arizona
Country United States
Start Date Jun 01, 2023
End Date May 31, 2025
Duration 730 days
Number of Grantees 1
Roles Principal Investigator
Data Source NIH (US)
Grant ID 10852966
Grant Description

PROJECT SUMMARY/ABSTRACT We propose a better way to diagnose pulmonary embolism (PE) early and save lives. More than 900,000 people in the

United States suffer from acute PE, and about 100,000 die each year. With 10% of such cases being fatal within the first hour of the onset of symptoms, rapid diagnosis of PE is critical to direct appropriate therapy. Unfortunately, clinical evaluation alone is unreliable and often results in grave diagnostic delays. Furthermore, while echocardiography at the

patient’s bedside can rapidly detect heart dysfunction caused by PE, traditional echocardiography performed by

cardiology services is not readily available in acute care settings. Thus, there is a critical need for use of a rapid, non-

invasive diagnostic tool at the point-of-care (POC) to accurately assess for PE and direct emergency therapy. The focus of

this research is to develop innovative artificial intelligence algorithms that can transform the care of patients with PE by enabling non-experts to use echocardiography to detect PE, direct emergency therapy, and improve survival. The

rationale underlying this proposal is that the proposed artificial intelligence technology tools will provide a relatively

simple and time-efficient strategy that can be implemented in most healthcare settings. This will, in turn, fulfill the overall goal of creating a positive shift in the management of patients presenting with PE. The proposed specialized artificial intelligence technology would ultimately be applicable to early detection of a wide variety of diseases. The long-term

goal of our research is to develop and implement effective automated ultrasound tools that would significantly impact the

diagnosis and treatment of different life-threatening conditions. The objective of this proposal is to develop and validate a

prototype mobile artificial intelligence enabled-software platform that can accurately detect echocardiographic signs of

PE. The hypothesis is that artificial intelligence algorithms will achieve levels of diagnostic accuracy equivalent to expert physician sonographers in detecting PE. This hypothesis will be tested by pursuing two specific aims: 1) Develop a

machine learning algorithm for the detection of PE that can be extended to detect other cardiopulmonary conditions using explicit echocardiographic signs of PE and implicit image content representations. 2) Validate the accuracy of the machine learning algorithm to detect PE on echocardiographic images using explicit sonographic signs. Innovative

reinforcement learning techniques will be utilized to accomplish the specific aims. The proposed research is significant

because it will transform the care of patients with PE by enabling non-experts to use POC echocardiography. It will also

have an immediate, positive impact because it will help lower morbidity, mortality, improve quality of life, and decrease healthcare costs by expediting diagnosis and therapeutic interventions. The proximate expected outcome of this work is improvement in the evaluation of patients with life-threatening PE by inexperienced healthcare providers, which will

result in more accurate and rapid identification of cases that require emergency treatment. Our proposal aligns with the NIBIB’s overall mission to advance healthcare through innovative engineering and, more specifically, its emphasis on development of transformative unsupervised and semi-supervised machine learning technologies to enhance analysis of

complex medical images and data for diagnosing and treating a wide range of diseases and health conditions.

All Grantees

University of Arizona

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