New smartphone biomarker uses a built-in camera to detect Type 2 diabetes - one of the world's top causes of disease and death. It potentially provides a low-cost, in-home option to blood draws and clinic-based screening tools.
Low-cost digital biomarker could be used to identify individuals at higher risk of having diabetes, and may help them seek medical care early, reports a new study. The findings of the study are published in the journal Nature Medicine. In the current pandemic, it also has been found to increase the risk of severe symptoms of COVID-19.
‘Type 2 diabetes affects over 32 million Americans and more than 450 million people worldwide and can increase the risk of diseases affecting nearly every organ system, including kidney failure, coronary heart disease, stroke, and blindness.
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Yet, half of the people with diabetes are unaware of their diagnosis and risks to their health.Read More..
"The ability to detect a condition like diabetes that has so many severe health consequences using a painless, smartphone-based test raises so many possibilities," said co-senior author Geoffrey H. Tison, MD, MPH, assistant professor in cardiology, of Aug. 17, 2020, study in Nature Medicine. "The vision would be for a tool like this to assist in identifying people at higher risk of having diabetes, ultimately helping to decrease the prevalence of undiagnosed diabetes."
Screening tools that can be deployed easily, using technology already contained in smartphones, could rapidly increase the ability to detect diabetes, the researchers said, including populations out of reach of traditional medical care.
While diabetes mellitus is the seventh-highest global cause of death on its own, according to the World Health Organization, it also significantly raises the risk of heart disease, which is the leading cause of death in the United States and worldwide. The U.S. Centers for Disease Control and Prevention estimate that people with Type 2 diabetes are twice as likely to die of heart disease as those who do not have diabetes.
"Diabetes can be asymptomatic for a long period of time, making it much harder to diagnose," said lead author Robert Avram, MD, MSc, clinical instructor in cardiology. "To date, noninvasive and widely-scalable tools to detect diabetes have been lacking, motivating us to develop this algorithm."
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In the Nature Medicine study, UCSF researchers obtained nearly 3 million PPG recordings from 53,870 patients in the Health eHeart Study who used the Azumio Instant Heart Rate app on the iPhone and reported having been diagnosed with diabetes by a health care provider. This data was used to both develop and validate a deep-learning algorithm to detect the presence of diabetes using smartphone-measured PPG signals.
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Among the patients that the algorithm predicted did not have diabetes, 92 to 97 percent indeed did not have the disease across the validation datasets. When this PPG-derived prediction was combined with other easily obtainable patient information, such as age, gender, body mass index and race/ethnicity, predictive performance improved further.
At this level of predictive performance, the authors said the algorithm could serve a similar role to other widespread disease screening tools to reach a much broader group of people, followed by a physician's confirmation of the diabetes diagnosis and a treatment plan.
"We demonstrated that the algorithm's performance is comparable to other commonly used tests, such as mammography for breast cancer or cervical cytology for cervical cancer, and its painlessness makes it attractive for repeated testing," said study author Jeffrey Olgin, MD, a UCSF Health cardiologist and professor and chief of the UCSF Division of Cardiology.
"A widely accessible smartphone-based tool like this could be used to identify and encourage individuals at higher risk of having prevalent diabetes to seek medical care and obtain a low-cost confirmatory test."
The authors recommend further study to determine the effectiveness of this approach for specific clinical applications, such as screening or therapeutic monitoring.
Source-Eurekalert