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Inventor profile of:

Daniel Gusenleitner

City:

Waltham, Massachusetts

Country:

United States

Published Applications:

7

Last publication date:

2025-09-25

Recent patent applications by Gusenleitner Daniel

Daniel Gusenleitner from Waltham, US has applied for patents for these inventions. The list has both pending applications and granted patents:

#1 | 2025-09-25
US20250297317A1
Chemistry; metallurgy

COMPOSITIONS AND METHODS FOR DETECTION OF LIVER CANCER

#2 | 2025-02-06
US20250043357A1
Chemistry; metallurgy

COMPOSITIONS AND METHODS FOR DETECTION OF ESOPHAGEAL CANCER

#3 | 2024-11-14
US20240377401A1
Physics

COMPOSITIONS AND METHODS FOR DETECTION OF PROSTATE CANCER

#4 | 2024-11-07
US20240369560A1
Physics

COMPOSITIONS AND METHODS FOR DETECTION OF PANCREATIC CANCER

#5 | 2024-11-07
US20240369558A1
Physics

COMPOSITIONS AND METHODS FOR DETECTION OF BREAST CANCER

#6 | 2024-11-07
US20240368701A1
Chemistry; metallurgy

COMPOSITIONS AND METHODS FOR CANCER DETECTION

#7 | 2024-10-17
US20240344139A1
Chemistry; metallurgy

COMPOSITIONS AND METHODS FOR DETECTION OF COLORECTAL CANCER

InventorID:

6810030 ⎘

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