Just in Time Intervention for Patients with Chronic Heart Diseases in Arizona tribes
Lead PI:
Fatemeh Afghah
Co-Pi:
Abstract

Cardiovascular diseases are the leading cause of death in the United States. Cardiovascular diseases are often chronic conditions that involve several costly emergency visits or long hospitalizations for the patients. Limited access to medical facilities in rural communities can result in worse health outcomes for these patients, in particular, the American Indian (AI) patients living in remote and rural areas. A considerable number of Arizonan AIs with cardiovascular conditions may be at risk of missing the window of opportunity for effective treatment and experiencing a lower chance of survival because of living far away from medical service providers. Arizona has the third largest population of Indian Americans who live in rural, tribal and often extremely isolated areas. The cardiac patients living in these areas do not have the required timely access to care, in particular to specialty services like cardiologists. Therefore, an important challenge related to these conditions for rural patients is the 'early detection of deterioration in symptoms', which is critical for 'just in time' interventions. This planning project is a collaborative effort among the Northern Arizona University (NAU) and University of Michigan (UM) as well as community leaders in rural and tribal health to discuss the best strategies to utilize an integrated remote heart monitoring system to benefit the patients with chronic heart conditions who live in rural, remote and isolated tribal areas.

This planning project offers several innovative approaches by working with the tribal AI community to begin(i) Developing a new remote heart monitoring technology to predict the deterioration of the symptoms and occurrence of critical heart conditions in patients with some common chronic cardiac conditions such as atrial fibrillation and congested heart failure. Several remote heart monitoring systems have focused on reliable detection of such events, however by the time that the device alerts the patients or their family, it is already too late to seek medical help for the patients who live in rural and remote areas. Hence, our early prediction framework can give the patients enough time to seek medical assistance. This system can also help caregivers control severe symptoms, reduce readmissions, and reduce the cost associated with care; (ii) Developing deep learning-based and Markov-based prediction methods; and (iii) Developing on-device prediction methods that can work independently of the cloud in order to service the patients with no access to broadband internet. This study can be replicated for a wide range of other diseases and medical conditions and in different geographic regions.

This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

Fatemeh Afghah
Fatemeh Afghah is an Associate Professor with the Electrical and Computer Engineering Department at Clemson University. Prior to joining Clemson University, she was an Associate Professor (2020-2021) and an Assistant Professor (2015-2020) with the School of Informatics, Computing and Cyber Systems, Northern Arizona University, where she was the Director of Wireless Networking and Information Processing (WiNIP) Laboratory. Her research interests include wireless communication networks, decision making in multi-agent systems, radio spectrum management, UAV networks, security and artificial intelligence in healthcare. Her recent project involves autonomous decision making in uncertain environments, using autonomous vehicles for disaster management and IoT security. Her research has been continuously supported by NSF, AFRL, AFOSR, NIH, and Arizona Board of Regents, where she has served in the role of PI or the sole-PI for grants with a total of over $4.8M, and in the role of Co-PI for grants with a value of $5M. She is the recipient of several awards including the Air Force Office of Scientific Research Young Investigator Award in 2019, NSF CAREER Award in 2020, NAU's Most Promising New Scholar Award in 2020, NSF CISE Research Initiation Initiative (CRII) Award in 2017, AFRL Visiting Research Faculty Award in 2016 and 2017. and NC Space grant’s New Investigator award in 2015. She is an inventor/co-inventor of 5 patents and an author/co-author of over 100 peer-reviewed publications. She served as the associate editor for several journals including Elsevier Ad hoc networks, Computer Network Journal, Springer Neural Processing Letters and Frontiers Aerial and Space Networks Journal. She is an IEEE Senior member and was the chair and organizer of IEEE Communications and Signal Processing Chapter at IEEE Central North Carolina Section. She served as the representative of IEEE regions R1-6 on the membership board standing committee for IEEE signal processing society (2016-18) and as Mentoring co-chair (2019-2021) and Advocate co-chair (2015-2016) for N2Women community. She has served as the organizer and TPC chair for several international workshops in the field of UAV communications and AI, including IEEE INFOCOM Workshop on Wireless Sensor, Robot, and UAV Networks (WiSRAN’19), IEEE WOWMOM Workshop on Wireless Networking, Planning, and Computing for UAV Swarms (SwarmNet’20&21), and 2021 NSF Smart Health PI workshop on “Smart Health in the AI and COVID Era”.
Performance Period: 10/01/2021 - 09/30/2022
Institution: Northern Arizona University
Award Number: 2125643