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Today we introduce human neural loop #assembloids created from 4 parts derived from stem cells to study the cortico-striato-midbrain-thalamo-cortical pathway and to model neurodevelopmental disease Work led by the remarkable Ji-Il Kim and Yuki Miura in the lab. Also in collaboration with the Marius Pachitariu lab at HHMI |...

27,410 views • 1 year ago •via X (Twitter)

10 Comments

Sergiu P. Pasca's profile picture
Sergiu P. Pasca1 year ago

Preprint here:

Prof Peter Hotez MD PhD's profile picture
Prof Peter Hotez MD PhD1 year ago

Extraordinary work, really impressive!

Sergiu P. Pasca's profile picture
Sergiu P. Pasca1 year ago

Thank you, Peter!

Maria Robles's profile picture
Maria Robles1 year ago

This is incredible. Congratulations ...the implications here are mindblowing !

Maria Robles's profile picture
Maria Robles1 year ago

We at Robles BioCeutics are big fans of your work !

Carolyn Bertozzi's profile picture
Carolyn Bertozzi1 year ago

Amazing ! 🤯

Sergiu P. Pasca's profile picture
Sergiu P. Pasca1 year ago

Thank you 🙏

Ella Marushchenko's profile picture
Ella Marushchenko1 year ago

Impressive work! Congratulations, Prof. Pasca!

Sergiu P. Pasca's profile picture
Sergiu P. Pasca1 year ago

Thank you

Julio Aguado's profile picture
Julio Aguado1 year ago

wow, exciting work indeed! 🤯

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