# A clinician-in-the-loop smart home to support health monitoring and intervention for chronic conditions

> **NIH NIH R01** · WASHINGTON STATE UNIVERSITY · 2021 · $144,139

## Abstract

PROJECT SUMMARY/ABSTRACT
 The world’s population is aging and the increasing number of older adults with chronic health conditions is a
challenge our society must address. While the idea of smart environments is now a reality, there remain gaps
in our knowledge about how to scale smart homes technologies for use in complex settings and to use
machine learning (ML) and activity learning technologies to design automated health assessment and
intervention strategies. The long-term objective of the parent project is to improve human health and positively
impact health care delivery by developing smart environments that aid with health monitoring and intervention.
The primary objective of this supplement project is to extend the design of our ‘clinician-in-the-loop’ smart
home to include computational methods for recognizing and reporting on bias in ML algorithms. Bias in ML
algorithms is a public health hazard. A secondary objective is to add to the scarce body of knowledge
regarding ML techniques for assessing and quantifying algorithm bias. In this supplement study, we will
demonstrate how to operationalize bioethics principles such as autonomy (the right to make informed decisions
about care and right to be informed about any associated risks) into actionable design requirements to close
the gap between principles and practice. We will then share these with the ML healthcare application (ML-
HCA) research community by creating a new open source online course containing 3 modules. This
supplement proposal builds upon our extensive experience in the CASAS lab at Washington State University
and prior collaboration on the development of smart home design, activity recognition, and the use of these
technologies for functional health monitoring, assessment, and intervention. This supplement effort will allow
us to expand our sample size and enhance the robustness of pervasive-computing-based behavior monitoring
and machine learning to further advance the quality of health monitoring, including bias recognition. We will
offer new advances in computational methods for anti-bias algorithm development using data from smart
homes and smart watches that are monitoring the daily activities of underrepresented persons. Our course
modules will support knowledge development regarding how to operationalize bioethics principles for practice
at each stage of ML-HCA design. In the online course we will also address the importance and impact of
multidisciplinary teams in designing for transparency, fairness, and non-discriminatory ML-HCA applications
such as the health smart home. Given that ML models are known to introduce bias and risk to members of
minority groups and given our national conversation on equity, fundamental human rights, and the risks
associated with living as a minority person, it is critical that health technology-human interface with
underrepresented persons is improved. Anti-bias ML training techniques that could be broadly applied in the
develop...

## Key facts

- **NIH application ID:** 10367017
- **Project number:** 3R01NR016732-05S1
- **Recipient organization:** WASHINGTON STATE UNIVERSITY
- **Principal Investigator:** Diane Joyce Cook
- **Activity code:** R01 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2021
- **Award amount:** $144,139
- **Award type:** 3
- **Project period:** 2017-08-01 → 2023-12-31

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10367017

## Citation

> US National Institutes of Health, RePORTER application 10367017, A clinician-in-the-loop smart home to support health monitoring and intervention for chronic conditions (3R01NR016732-05S1). Retrieved via AI Analytics 2026-05-21 from https://api.ai-analytics.org/grant/nih/10367017. Licensed CC0.

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