Is this your podcast?
Sign up to track ranks and reviews from Spotify, Apple Podcasts and more
Minerva Sweeney Wren
McGillicuddy and Murder's Pawn Shop
It’s 1921. Maude starts writing in a diary, but her life is abysmally boring and she has nothing to talk about. A life of meaning feels far away. One afternoon, in an unusual pawn shop, she finds a tiny fragment of china with nothing on it but a bright blue eye. Maude takes the china eye home with her, not realizing she has cursed herself - straight into an underground world of paranormal speakeasies, plague mask thingies, magic doorways, unsolved murders - and an extraordinary life. https://www.minervasweeneywren.com/ @megmccauleyink Be part of the adventure: Patreon.com/sweeneywren ...
Listen now
Ratings & Reviews
4.9 stars from 159 ratings
Fun / Very Impressive
This is a really unique story that blends many elements into a fascinating and very lighthearted tale. It gets much more impressive as it moves along especially after learning the story behind it!
Recycler4570 via Apple Podcasts · United States of America · 08/25/23
I love this podcast so much
I've been listening to this podcast over the past few months and adore it <3 It's fun, imagininative, and each episode leaves you desperate for more! This has been a fantastic undertaking for the author and I hope she publishes a book of Melinda Maudie Merkle's most excellent...Read full review »
Trasface via Apple Podcasts · Canada · 06/27/23
Maude felt like a friend
Absolutely loved it 💕
talsters via Apple Podcasts · United States of America · 03/24/23
Recent Episodes
Thank you for listening! To experience more adventure and support the show: www.minervasweeneywren.com Follow @megmccauleyink on Instagram and Twitter Give a dollar and become magic: patreon.com/sweeneywren or send a thank you via Venmo: @minervasweeneywren  Visit the store:...
Published 03/31/22
Do you host a podcast?
Track your ranks and reviews from Spotify, Apple Podcasts and more.
See hourly chart positions and more than 30 days of history.
Get Chartable Analytics »