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Genetic Factors Key to Predicting Post-Angiography Outcomes: New Study Reveals Insights

Genomic Drivers⁣ of Coronary Artery Disease: A New ‍Frontier in Predicting Severity and outcomes

Coronary artery disease (CAD),a leading cause of mortality worldwide,has long been recognized as a condition influenced by both lifestyle and genetics. Now, groundbreaking research reveals that ‍ genomic drivers of CAD ⁣are not only linked⁣ to ​the severity of the disease but also predict the ⁢risk of ‍adverse outcomes⁣ after ‍diagnostic procedures like coronary angiography. This discovery could revolutionize how clinicians approach both⁤ primary and secondary prevention strategies ​for CAD.

The Study: Unraveling‌ the Genetic Blueprint of CAD ⁤

A recent retrospective cohort study, lead by Kelvin Supriami, MD, ‍and Sarah M. Urbut, MD, PhD,‌ from ​Harvard Medical School, examined the role of genomic drivers in CAD progression and outcomes. The study, published in JAMA Network Open, analyzed⁢ data from 3,518 participants who⁢ underwent their first coronary angiography between July 2000 and august 2023. ​These individuals, with a median‍ age of 64 and predominantly White (89.6%), were ​followed through⁣ October 2023 to assess long-term‍ outcomes. ⁢

The researchers focused on three key genomic drivers:

  1. Pathogenic variants of familial hypercholesterolemia
  2. High CAD polygenic‌ risk scores
  3. Clonal hematopoiesis of indeterminate potential​ (CHIP)

Using the modified Gensini score to⁣ measure CAD burden, ⁣the‌ team evaluated the severity of the disease ‌(none, ‌mild, moderate, or severe) and its presentation (acute ⁤or stable). They also tracked‌ angiographic outcomes,​ such as repeat angiograms, revascularization, and in-stent restenosis, as well as clinical outcomes like heart failure and all-cause mortality.

Key Findings: Genomics⁣ as a ‌Predictor⁤ of CAD Severity⁢ and Outcomes ‌

The results⁣ were striking.Patients‍ with at least one genomic driver of ⁤CAD had significantly higher‌ odds of presenting with acute ⁤coronary syndromes (adjusted⁤ odds⁢ ratio [aOR], 2.67) and developing severe angiographic CAD (aOR, 2.94). ‌Specifically:

  • Familial hypercholesterolemia carriers were three times more likely to have moderate to severe CAD compared to those with mild or no CAD.
  • Each standard⁣ deviation increase in the⁣ polygenic risk score was associated with a 12.51-point higher Gensini score, ‌indicating greater disease ⁤burden.‍ ⁢

Over a median follow-up of 9.2⁢ years, these genomic drivers ⁣also predicted adverse outcomes:

  • Familial hypercholesterolemia‍ and high polygenic risk⁤ scores were⁣ linked to increased risks of repeat angiograms,​ revascularization, and in-stent restenosis.
  • CHIP carriers, while not significantly associated with angiographic outcomes, faced higher risks of heart failure and mortality.

Implications for Clinical Practice

The study’s authors‍ emphasized the potential of genomic risk details in guiding secondary prevention strategies. ‌“while genomics⁤ has conventionally ⁤been perceived as​ most ⁢helpful in primary CAD prevention, recent​ evidence‌ shows a strong ability to even predict risk of recurrent events after a CAD diagnosis,” they ⁢wrote. “Genomic risk information might be helpful in⁢ guiding secondary prevention strategies, even after CAD ⁤is diagnosed on coronary angiography, such as with more aggressive treatment goals for individuals at the highest risk of progression due to the underlying genomic profile.”

Limitations and Future Directions ⁢

Despite its groundbreaking insights, the study had limitations. The‌ small sample size of familial hypercholesterolemia​ carriers and the predominantly White study population may limit the generalizability of the findings. Additionally,coronary angiography has inherent limitations in assessing plaque presence and disease extent.

Summary​ Table: Key Findings ​at a Glance

| genomic ‍Driver ‍‌ ⁤ ‍ ⁣ ‌ ‍ | Association with CAD Severity | adverse Outcomes ⁢ ​ ‍ |
|———————————-|———————————–|———————————————–|
| Familial Hypercholesterolemia | ​Higher odds of moderate-severe CAD | ​Repeat angiogram, revascularization ​ ‌|
| High Polygenic Risk Score ​ ⁣ | greater disease burden (Gensini score) | In-stent restenosis, repeat angiogram ⁤ ​⁣ ⁣ |
| CHIP ‌ ⁢ ​ ‌ ​ | No significant ⁣angiographic link ⁣ | Increased ⁣heart failure and mortality risks ​ |

Conclusion: ‍A New Era in CAD Management ​

This study underscores the transformative potential of genomics in understanding‌ and managing‌ CAD. By identifying patients at higher risk of disease progression⁤ and adverse outcomes, clinicians can tailor more aggressive and personalized treatment strategies. As research continues to unravel the genetic architecture of CAD, the integration‍ of genomic data into clinical practice could pave the way​ for more effective prevention and management of this global health challenge. ⁢​

For more⁣ details, read the full study published in JAMA ⁢Network Open health,a pioneering study led by Dr. Kelvin‌ Supriami and Dr. Sarah‌ M. Urbut from Harvard Medical⁣ School has uncovered⁤ the transformative potential of⁢ genomics in understanding and managing coronary artery disease (CAD). ⁣We sat ​down ⁢wiht Dr. Urbut to discuss thier groundbreaking findings, published ​in JAMA⁣ Network Open, which highlight how genomic drivers not only predict CAD severity but also adverse outcomes following diagnostic procedures like coronary angiography.

The Role of Genomics in CAD Severity and Progression

Dr. Urbut, your study revealed striking associations ‍between genomic drivers and CAD severity. Could you elaborate⁤ on the ⁢key findings and their implications?

Dr. Urbut:

absolutely. We focused on three primary genomic drivers: familial hypercholesterolemia,⁤ polygenic ​risk scores ​for CAD, and clonal hematopoiesis of indeterminate potential (CHIP). Patients carrying at⁣ least one of these genomic drivers ⁢had substantially higher odds of presenting with acute coronary syndromes and developing severe⁣ angiographic CAD.

As a notable example, familial hypercholesterolemia carriers were ⁣three times more likely to have moderate to‌ severe CAD. Similarly, each standard deviation⁣ increase in the polygenic risk score was associated ⁤with a 12.51-point​ higher Gensini score, indicating greater disease burden.

Predicting Adverse Outcomes and‍ Guiding Secondary Prevention Strategies

Your study‌ also shed light on the genomic predictors⁢ of adverse outcomes ‌following diagnostic procedures.‌ how‍ can this knowledge ⁤help clinicians tailor secondary prevention ⁣strategies?

Dr.Urbut:

Yes, we found ⁤that these genomic drivers could predict adverse outcomes even after a CAD diagnosis. Familial hypercholesterolemia⁣ and high polygenic⁢ risk scores were‌ linked to‌ increased risks of repeat angiograms, revascularization, and ⁢in-stent restenosis.

Interestingly, CHIP carriers, while not significantly associated with angiographic outcomes, faced higher ‍risks​ of heart failure and mortality. This suggests that genomic ⁢risk information might be helpful in guiding more aggressive treatment goals for individuals at the highest risk of progression due to ‍their⁣ underlying genomic⁣ profile.

Addressing Study⁤ Limitations​ and Future Directions

Even though your study presents compelling⁢ evidence, it has some limitations, ⁤such ⁤as a ‌small sample size of familial hypercholesterolemia carriers‍ and a predominantly whitepopulation. How do you plan to address these limitations in future research?

Dr. ‌Urbut:

You’re right. The small sample size of familial hypercholesterolemia carriers and the predominantly White study population may ‍limit ⁢the generalizability of our findings. ⁤To address this,we’re actively working on expanding our⁤ cohort ​to include more diverse populations and a larger number of​ individuals with ​monogenic CAD.

Additionally, ‌coronary angiography has inherent limitations in assessing plaque presence and disease extent. In future studies, we hope to incorporate more advanced imaging techniques, such as optical coherence tomography and intra⁣ Moulusional coronary flow reserve measurements, to provide a more comprehensive assessment of CAD.

Embracing a New Era ​in⁣ CAD Management

As we continue to unravel the genetic architecture of ​CAD, how do you ‌envision genomics transforming⁤ the prevention and management of this global health challenge?

Dr. Urbut:

I believe we’re on the cusp of a new era in CAD management.By integrating genomics into ‌clinical practice, we can identify patient populations at higher risk of disease progression and⁤ adverse outcomes. This will enable us to tailor more personalized and aggressive preventive and therapeutic strategies.

Moreover, as our understanding ⁣of CAD genetics ‌grows, we may uncover novel druggable targets or develop innovative therapies specifically designed to ​address adverse genetic factors. Ultimately, genomics has the potential to revolutionize our approach to CAD management and improve patient outcomes worldwide.

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