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Everything Epigenetics - Predicting Mental Illnesses Using Epigenetics with Dr. Zachary Kaminsky

Predicting Mental Illnesses Using Epigenetics with Dr. Zachary Kaminsky

Everything Epigenetics

06/21/23 • 50 min

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According to the National Institute of Mental Health, approximately 20% of adults (around 51.5 million people) experience a mental illness each year. I believe that is 51.5 million people too many!
There is a HUGE need for the ability to predict mental illness, as the current diagnostic process has many limitations and challenges.
By analyzing epigenetic markers associated with mental disorders, we can actually predict the likelihood of developing these conditions and tailor personalized treatment plans for improved outcomes.
Predicting mental illness using epigenetics is paramount for early intervention, personalized medicine, and improved outcomes. With DNA methylation marks in peripheral tissues serving as predictive biomarkers, healthcare professionals can identify those at high risk and initiate targeted support.
Early detection enables timely interventions, potentially mitigating the severity and progression of these disorders. By leveraging cutting-edge technologies like artificial intelligence and natural language processing, we can even analyze social media data to predict suicidal thoughts and behaviors, revolutionizing suicide prevention strategies.
In this week’s Everything Epigenetics podcast, Zach and I chat about his work which primarily concentrates on identifying the epigenetic factors that contribute to psychiatric diseases, specifically focusing on mood disorders.
We discuss the microarray technology he utilizes to conduct genome-wide exploratory analyses, aiming to discover disease associations in both human subjects and animal models. We focus on Zach’s investigations which encompass a range of conditions, including major depression, postpartum depression, and suicide.
Another significant area of Zach’s research that we explore is centered around the development of predictive biomarkers for disease risk, using DNA methylation patterns in peripheral tissues.
Furthermore, we talk about his research program that involves the development and application of artificial intelligence-driven natural language processing techniques, and how he applies these techniques to social media data to predict the likelihood of future suicidal thoughts and behaviors.
Additionally, Zach is focused on creating and evaluating innovative digitally delivered suicide interventions that make use of these technologies.

In this episode of Everything Epigenetics, you’ll learn about:

  • Zach’s story starting with, “I met a girl...”
  • Zach’s focus on suicide, PTSD, and post-partum depression epigenetics
  • Dionysus digital health
  • Why epigenetics is giving researchers hope as a diagnostic tool
  • Epigenetics being the common denominator of nature and nurture
  • Stress vulnerability and epigenetic variation
  • The importance of replication and validation studies
  • Mol

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Thank you for joining us at the Everything Epigenetics Podcast and remember you have control over your Epigenetics, so tune in next time to learn more about how to harness this knowledge for your benefit.

06/21/23 • 50 min

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