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Inventor profile of:

Yan HAO

City:

Suzhou

Country:

China

Published Applications:

5

Last publication date:

2024-11-07

Top Assignees for applications by Yan HAO

The entities that hold a legal rights for patent applications filed by inventor HAO Yan:

  • CGENETECH (SUZHOU, CHINA) CO., LTD. 1 Suzhou, China

Recent patent applications by HAO Yan

Yan HAO from Suzhou, CN has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2024-11-07
US20240368161A1
Chemistry; metallurgy

CYCLOPROPANECARBOXAMIDE-CONTAINING COMPOUNDS AND APPLICATION THEREOF

#2 | 2024-09-05
US20240294525A1
Chemistry; metallurgy

COMPOUNDS AS GLP-1 RECEPTOR AGONISTS AND USES THEREOF

#3 | 2024-07-25
US20240246927A1
Chemistry; metallurgy

COMPOUNDS WITH ALK INHIBITORY ACTIVITY AND PREPARATION METHOD AND USE THEREOF

#4 | 2023-04-27
US20230125233A1
Chemistry; metallurgy

PYRIMIDINE DERIVATIVE, AND PREPARATION METHOD THEREFOR AND USE THEREOF

#5 | 2020-04-23
US20200123164A1
Chemistry; metallurgy

Salt of cetagliptin, preparation method thereof, pharmaceutical composition, and use thereof

InventorID:

2707159 ⎘

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