Megan Lavey-Heaton

Data Journalist, Podcasts and Special Projects

AS SEEN ON

Preston's Summary

Megan Lavey-Heaton is a Data Journalist specializing in Podcasts and Special Projects at PennLive.com. She covers a range of topics including sports, competitive sports, events and conferences, and academic conferences, with a particular focus on Pennsylvania-related themes such as the 2023 Elections and football at Pennsylvania State University. Megan's work has been featured in notable publications including The Citizens' Voice, ELDRED AREA FREE LIBRARY & HISTORICAL SOCIETY, and Daily Item.

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Geo Focus

Harrisburg, United States (Local)

Coverage Attributes:

Beta
Event Coverage: 30 %
Government Announcement: 25 %
Evolving Stories: 13 %
Breaking News: 6 %
Cites Data: 5 %

Themes Covered:

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Most Recent Topics:

  • Sports Tournaments
  • Event Management Software
  • Individual Sports
  • Team Sports

Pitching Insights

Megan Lavey-Heaton's coverage primarily centers around local Pennsylvania events, with a strong focus on government and politics. Given this, she is likely to be most responsive to pitches related to local election results, government announcements at the local level in Pennsylvania, and community events within her geographic coverage area.

Additionally, Megan has also covered sports events such as high school football games and Penn State football attendance. Pitches related to local sports events or trends could also resonate with her audience.

Considering the predominance of event coverage and government announcement themes in her articles, public relations professionals may find success by offering exclusive insights into evolving stories related to Pennsylvania-based elections or significant community events.

This information evolves through artificial intelligence and human feedback. Improve this profile .

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