#64 Dr. Michael Snyder on Continuous Glucose Monitoring and Deep Profiling for Personalized Medicine

Posted on May 24th 2021 (almost 4 years)

The BDNF Protocol Guide

An essential checklist for cognitive longevity — filled with specific exercise, heat stress, and omega-3 protocols for boosting BDNF. Enter your email, and we'll deliver it straight to your inbox.

Your subscription could not be saved. Please try again.
Please check your email to confirm your subscription and get The BDNF Protocol Guide!

You'll also receive updates from Rhonda & FoundMyFitness

Dr. Michael Snyder, the chairman of the Department of Genetics and director of the Center for Genomics and Personalized Medicine at Stanford University, is a pioneer and powerful advocate in the field of "wearables," electronic devices that patients or consumers can wear to monitor their health, fitness, activity, sleep, or even mood. Wearable devices can transmit information to a physician or user in real time, allowing the wearer to actively participate in monitoring and maintaining their own health. The proud bearer of eight wearables, Dr. Snyder describes himself as one of the most extensively monitored scientific researchers, a firm believer that "more is better" when it comes to data.

With increasingly precise tracking, the future of medicine may be one in which early insights gathered from emerging clinical tools and common consumer wearables fundamentally change a person's health trajectory – a stark contrast from the confining, too-little-too-late, reactive approach of traditional medicine.

Data on the genome, transcriptome, proteome, metabolome, and more lend insights on disease vulnerabilities that might lead to more effective and/or timely treatment and intervention. In his case, he identified a personal susceptibility that didn't fit with what he expected from his phenotype – a surprising diagnosis of type 2 diabetes.

In this episode, Dr. Snyder and I discuss:

  • How Dr. Snyder's genomic analysis revealed he was at risk for type 2 diabetes.
  • How some of Dr. Snyder's data suggest that nine out of ten people with pre-diabetes are unaware they have it.
  • How a person's blood glucose response to a specific type of food can differ markedly from another person's.
  • How Dr. Snyder used wearable devices to help diagnose his Lyme disease.
  • How Dr. Synder's ongoing study uses wearable devices to help identify elevated heart rate as one of the first symptoms in many illnesses, including COVID-19.
  • How smartwatches that can detect heart rate variability may help detect some heart conditions such as atrial fibrillation – a forerunner for heart disease.
  • How measuring a person's exposome can identify what airborne pathogens they've been exposed to and what this means for disease risk.
  • How children exposed to high levels of air pollution have biomarkers of Alzheimer's disease in their brains.
  • How certain lifestyle modifications such as sauna use and sulforaphane intake can help rid the body of some airborne pollutants.
  • How Dr. Snyder's data suggest that organs such as the heart, liver, and kidneys age at different rates in different people and how this may define how people age and what diseases they are more susceptible to.
  • How the gut microbiome influences glucose regulation and cholesterol.

Continuous glucose monitors for personalized medicine

"It's pretty clear that nine out of ten people who have pre-diabetes…actually have no idea." - Dr. Michael Snyder Click To Tweet

Type 2 diabetes is a complex constellation of interrelated metabolic conditions characterized by high blood glucose levels. A precursor to the disease is prediabetes – a condition in which blood glucose levels are higher than normal, but not high enough to indicate a diagnosis of type 2 diabetes. Experts estimate that more than 88 million people living in the United States (roughly one-third of the population) have prediabetes. The condition can be halted or reversed with dietary and lifestyle modifications, including weight loss, exercise, and stress reduction. But most people with prediabetes don't know they have the disorder until it has transitioned to diabetes.

Wearable devices that have garnered a lot of attention in recent years are continuous glucose monitors, or CGMs for short. These small electronic devices allow users to monitor their blood glucose levels in more or less real-time, through a tiny sensor placed on the skin where it samples from the interstitium rather than the blood.

Although CGMs were originally designed for people who have diabetes, the devices have taken on tremendous value as diagnostic tools – helping to not only identify the vast numbers of people who have prediabetes or diabetes, but also provide those not clinically affected by diabetes with a way to receive near-instant feedback on their dietary glucose response. CGMs can also yield unexpected insights as scientists like Dr. Snyder divine a way to use the broader patterns of glucose regulation as a means to identify non-dietary factors, such as viral infection or stress, that can markedly increase blood glucose levels. Since maintaining consistent, moderate blood glucose levels is the key to maintaining long-term metabolic health, CGMs may be a powerful weapon in thwarting what has become a growing public health problem.

Mending a broken healthcare system with preventive medicine

But identifying people who have prediabetes is just one example of how wearable devices and extensive biomonitoring can be used to paint a more accurate, comprehensive picture of a person's health. Rather than relying on blood tests performed just once a year (or less often) during a routine physical, measurements derived from biospecimens and wearable devices have the advantage of providing up-to-the-minute assessments of the thousands of physiological processes occurring in the human body and identifying when things go wrong – in the moment. Such knowledge offers the promise of early diagnosis or even prevention of cancers, cardiovascular diseases, and metabolic dysfunction in their earliest stages.

Biomonitoring through common wearables to detect early infection

Dr. Snyder's experiences with analyzing his own data, as we discuss in this episode, and identifying signals that indicated he had been ill prompted him to develop an algorithm that used changes in a person's heart rate as a bellwether of acute illness. He and his colleagues are now investigating the algorithm's use in identifying whether a person might have COVID-19. The early data are promising, having demonstrated that more than 80 percent of people who have COVID-19 have an increase in heart rate early in the disease process. Such a finding could have tremendous public health benefits, alerting people to the fact that they are ill so they can self-quarantine.

A totality of non-genetic tangible exposures

[tweetbox text='"…the ultimate goal is to try and understand how exposures will contribute to your disease [risk]. Because there's no question that your risk for disease depends upon genetics, but it also depends upon [your] environment." - Dr. Michael Snyder Click To Tweet

Another wearable, an investigative research tool developed by Dr. Snyder's group, attempts to measure a person's airborne and chemical exposome, the totality of non-genetic tangible exposures a person experiences during a lifetime, including those from air, physical surroundings, microbes, and chemicals. Because many of the things a person breathes and is exposed to are carcinogenic or carry other risks, the exposome can have myriad effects on one's health. Assessing one's genetic and environmental exposures can paint a clear picture of disease risk and help drive informed decisions about diet and lifestyle to mitigate some of that risk.

As the human body ages, massive shifts in the proteome occur, correlating with distinct biological pathways and revealing associations with age-related diseases and phenotypes. Understanding these and other molecular changes has the potential to reveal unique signatures and pathways that might offer targets for preventing age-related diseases.

In this episode, Dr. Michael Snyder describes his personal journey with biomonitoring and wearable devices and discusses the future of personalized medicine through the use of technology.

Sign-up for Stanford Innovation lab's COVID-19 wearable detection study

This episode was fiscally sponsored through The Film Collaborative and a grant from a generous anonymous donor.

It may be possible to detect infection pre-symptomatically using extremely common health data gathered by smart devices you may already have. If you have any of a number of common consumer fitness or health trackers, you may be eligible to join Dr. Snyder and colleagues COVID-19 detection study. Some of the wearables they support in combination with certain smartphones, include:

  • Fitbit
  • Garmin
  • Apple Watch
  • Oura
  • Motiv

COVID-19
 Wearables Study

Relevant publications

Learn more about Dr. Michael Snyder

Hear new content from Rhonda on The Aliquot, our member's only podcast

Listen in on our regularly curated interview segments called "Aliquots" released every week on our premium podcast The Aliquot. Aliquots come in two flavors: features and mashups.

  • Hours of deep dive on topics like fasting, sauna, child development surfaced from our enormous collection of members-only Q&A episodes.
  • Important conversational highlights from our interviews with extra commentary and value. Short but salient.

Comments

You must login or register to comment
billcarlin
11/13/2021

Keto & nutritional adjustments for off-normal (crazy) schedules. The question I have is when, and how often, I should choose to take glucose & ketone readings for them to be valid enough to drive dietary adjustments or “feedings”.

Several times a year I have to reverse my schedule by 12 hours to support night shift work. The duration of those is from 3 to 6 weeks. It’s a 12 hour shift & just about everything will adjust by 12 hours except lunch. Lunch at midnight is the most prominent feature of the body “not cooperating”. My “day”, and all of the typical milestones, is from waking up at 2pm for supp’s & prescription medication. My commute starts at 4pm, the shift lasts 12 hours, and the commute “home” (this is a travel schedule also) starts at 6am. I generally go to sleep around 7am. Several years ago (when I could physically afford to burn the candle at both ends) I would squeeze triathlon training in to this mess. My schedule was not the worst that my coach had to work with. That honor went to an international airline pilot. I used a recovery metric tool called RestWise that would only work if I was on a conventional daylight schedule. Confirming with the developers that their algorithms fell apart when going nocturnal leads me to believe that some things just won’t work due to some rigid circadian limits.