Purpose

In this project, Institute of Bioengineering & Bioimaging (IBB), A*STAR would like to collaborate with Massachusetts General Hospital to aggregate patient data and to further develop its software algorithm using machine learning and statistical models for predicting exacerbations and deterioration on 60 patients with cardiopulmonary diseases.

Conditions

Eligibility

Eligible Ages
Over 18 Years
Eligible Genders
All
Accepts Healthy Volunteers
No

Inclusion Criteria

  1. Subject age 18 or older 2. Receives all primary and specialty care within the MassGeneral Brigham system 3. A history of one of the following diagnoses: 1. Asthma 2. Cystic Fibrosis 3. Chronic obstructive pulmonary disease 4. Congestive heart failure 4. At least four documented exacerbations of the above disease in the past 12 months as defined by the following corresponding criteria: a. Asthma exacerbation: i. a minimum 3-day course of oral steroids ii. for patients on chronic steroids, an increased dose of steroids. b. Cystic fibrosis exacerbation: a minimum 7-day course of systemic antibiotics (not including any chronic suppressive antibiotics). c. Chronic obstructive pulmonary disease exacerbation: all three of (1) increase in frequency and severity or severity of cough, (2) increase in volume and/or change of character of sputum production, and (3) increase in dyspnea, and requiring treatment with short-acting bronchodilators, antibiotics, and oral or intravenous glucocorticoids. d. Congestive heart failure exacerbation: volume overload (as evidenced by weight gain or elevated BNP [>100 pg/mL]/NT-proBNP [>300 pg/mL)) plus dyspnea plus diuretic treatment (new or increase from baseline). 5. Subject able to provide informed consent.

Exclusion Criteria

  1. Subjects with a history of adhesive or tape allergy or skin reaction. 2. Subjects with pacemaker, Automatic Implantable Cardioverter Defibrillator (AICD) and other implantable electronic devices. 3. Subjects with neuromuscular disease, seizures and/or Parkinson's disease. 4. Subjects with expected out of state travel within a 90-day period or travel to a location with no internet access. 5. Subjects enrolled in hospice care or life expectancy less than three months. 6. Subjects living more than 60 miles away from Massachusetts General Hospital. -

Study Design

Phase
N/A
Study Type
Interventional
Allocation
N/A
Intervention Model
Single Group Assignment
Primary Purpose
Diagnostic
Masking
None (Open Label)

Arm Groups

ArmDescriptionAssigned Intervention
Experimental
Respiratory Sensor measurements
The participant will receive 2 Respiratory Sensors and 1 gateway with wireless compatibility and a welcome packet with instructions for use, a reminder description of the study purpose and procedures, and research staff contact information. Research staff will contact participants to ensure appropriate setup of the Respiratory Sensor and training on proper use. Research staff will ask the subject to place the Respiratory Sensor on the top left-side of the chest. The Respiratory Sensor continuously collects and monitors respiratory data. The participant will be instructed to change each Respiratory Sensor after 24-48 hours. Subjects will be asked to charge each Respiratory Sensor once it is removed. Subjects will exit the study upon completion of the 90-day follow-up.
  • Device: Respiratory Sensor measurements
    The participant will receive 2 Respiratory Sensors and 1 gateway with wireless compatibility and a welcome packet with instructions for use, a reminder description of the study purpose and procedures, and research staff contact information. Research staff will contact participants to ensure appropriate setup of the Respiratory Sensor and training on proper use. Research staff will ask the subject to place the Respiratory Sensor on the top left-side of the chest. The Respiratory Sensor continuously collects and monitors respiratory data. The participant will be instructed to change each Respiratory Sensor after 24-48 hours. Subjects will be asked to charge each Respiratory Sensor once it is removed. Subjects will exit the study upon completion of the 90-day follow-up.

Recruiting Locations

Integrated Care Management Program
Boston, Massachusetts 02114
Contact:
Peter Moschovis
617-726-2000
pmoschovis@mgh.harvard.edu

More Details

Status
Recruiting
Sponsor
Institute of Bioengineering and Bioimaging (IBB)

Study Contact

Gurpreet Singh
+65 68247027
Gurpreet_Singh@ibb.a-star.edu.sg

Detailed Description

Exacerbations of chronic cardiopulmonary diseases are a major cause of morbidity and mortality worldwide. There are an estimated 23 million patients with heart failure worldwide, and the prevalence of heart failure in the United Sates is projected to rise over the next four decades with an estimated 772,000 new heart failure cases projected in the year 2040. Exacerbations of chronic respiratory disease can accelerate lung function decline and reduce survival. They may also lead to significant rise to the cost of healthcare. Chronic Obstructive Pulmonary Disease (COPD) exacerbations are an important cause of readmissions with a 30-day readmission rate of approximately 20% and subsequent expenditure of US $15 Billion in annual health care spending. Cystic fibrosis (CF), a genetic disorder that affects airways clearance and secretions, has a 30-day readmission rate of approximately 11%. Due to the high cost of hospital stays and emergency department visits, and especially in the setting of the COVID-19 pandemic, more cost-effective "out-of-hospital" management models have become increasingly appealing. Such models not only provide cost benefits to patients, payers, and hospitals, but also increase the ability to provide care to people at home. Respiratory variables have shown to be one of the most sensitive indicators for COPD exacerbation, and a significant correlation between respiratory rate and COPD symptoms has been observed. When combined with pulse rate and oxygen saturation, these variables provide a useful method of identifying exacerbations. Current analytical models are designed to trigger alarms, which are generally based on traditional threshold-type driven analytics. Such methods are not able to identify and recognize trends due to limited access to advanced analytics (e.g., machine learning methods). The device proposed for use in this study will measure respiratory rate, Inspiratory: Expiratory (I:E) ratio, respiratory depth, heart rate, SpO2, SpO2 variability, patient movement, and the investigators will use machine learning and data modeling to analyze their trends over time. The wearable biometric platform (termed 'Respiratory Sensor') developed by Institute of Bioengineering & Bioimaging (IBB), A*STAR is to be worn on the chest area via a medical grade adhesive patch. The Respiratory Sensor includes a non-invasive sensor combining an accelerometer and light-based methods to sense chest wall expansion or breathing. The Respiratory Sensor allows the possibility of collecting additional respiratory information (respiratory rate, relative tidal depth and duty cycle) as predictors for exacerbation of chronic cardiopulmonary diseases and perhaps improving advanced analytical models that can provide better sensitivity and specificity compared to traditional models (e.g. clinical diaries). Ultimately, this may allow early prediction of outpatient exacerbations to allow early intervention and reduced re-admissions (via remote interventions). In this project, Institute of Bioengineering & Bioimaging (IBB), A*STAR would like to collaborate with Massachusetts General Hospital to aggregate patient data and to further develop its software algorithm using machine learning (e.g. random forest models and long-short term memory models etc.) and statistical models (e.g. regression models and survival analysis with univariate and multivariate analysis) based on respiratory features and hemodynamics for predicting exacerbations and deterioration on 60 patients with cardiopulmonary diseases. The end-points of this collaboration includes the following: 1. To validate hypothesis of using respiratory-based biomarkers in models (disease agnostic and disease specific) to predict exacerbations - benchmarking to be done versus follow-up questionnaires and phone calls 2. To validate level of compliance, drop-out rate and if additional measures are required to get patients to follow-on

Notice

Study information shown on this site is derived from ClinicalTrials.gov (a public registry operated by the National Institutes of Health). The listing of studies provided is not certain to be all studies for which you might be eligible. Furthermore, study eligibility requirements can be difficult to understand and may change over time, so it is wise to speak with your medical care provider and individual research study teams when making decisions related to participation.