Jennifer Byrne

Staff Writer

AS SEEN ON

Preston's Summary

Jennifer Byrne is a Staff Writer at various esteemed publications including The Sydney Morning Herald and BMJ. She focuses on themes related to medicine and healthcare, exploring topics such as healthcare systems, alternative medicine, and social issues, while also delving into the impacts of AI and media in the context of current events like the Coronavirus and LGBTQ matters. Jennifer's work has been featured in outlets such as Atlas Obscura, Retraction Watch, Mental Floss, Brisbane Times, Healio, and EIN Presswire.

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Coverage Attributes:

Beta
Cites Data: 72 %
Press Release: 10 %
Government Announcement: 5 %
Profile Feature: 3 %
Expert Commentary: 2 %

Themes Covered:

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Most Recent Topics:

  • Oncology
  • Palliative Care
  • Mental Health
  • Public Health
  • Patient Care
  • Immunotherapy

Pitching Insights

Jennifer Byrne's articles predominantly focus on healthcare and pharmaceutical topics, with a particular emphasis on cancer-related issues, oncology, and medical research. Her coverage often includes citations of data, indicating a preference for evidence-based reporting.

Given the data-driven nature of her work, Jennifer would likely be interested in pitches that provide access to new or compelling scientific studies or clinical trial results related to cancer treatment and survivorship. Additionally, she may welcome connections to experts who can offer insights backed by robust data analysis within the healthcare and pharmaceutical sectors.

As Jennifer does not have a specified geographic focus and covers topics relevant globally, sources from diverse locations who can contribute valuable insights into the mentioned themes are likely to resonate with her coverage objectives.

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