02.07.2024

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Teaser image to Nassir Navab elected as Academy of Medical and Biological Engineers (IAMBE) Fellow

Nassir Navab Elected as Academy of Medical and Biological Engineers (IAMBE) Fellow

Recognizing Exceptional Contributions to Medical and Biological Engineering

The International Academy of Medical and Biological Engineering (IAMBE) is composed of fellows who are elected in recognition of their exceptional and sustained contributions to the advancement of medical and biological engineering.

We are honored to announce that our Principal Investigator Nassir Navab has been elected as a fellow of the IAMBE, class of 2024.

We are honored to announce that our PI Nassir Navab has been elected as a fellow of the IAMBE, class of 2024.

Congrats from us!

#award #research #navab
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