Baltimore, MD, United States of America

Xiaoying Tang


Average Co-Inventor Count = 3.0

ph-index = 1


Company Filing History:


Years Active: 2020

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1 patent (USPTO):Explore Patents

Title: Xiaoying Tang: Innovator in Automated Anatomical Labeling

Introduction

Xiaoying Tang is a prominent inventor based in Baltimore, MD (US). She has made significant contributions to the field of medical imaging through her innovative work. Her expertise lies in developing advanced methods for anatomical labeling, which enhances the accuracy of medical diagnoses.

Latest Patents

Xiaoying Tang holds a patent titled "Automated anatomical labeling by multi-contrast diffeomorphic probability fusion." This invention is a computer-implemented method, system, and non-transitory computer-readable storage medium for classifying a region of interest in a subject. The process involves receiving imaging data that includes the region of interest, providing multiple atlases with candidate regions, co-registering these atlases to the imaging data, and assigning probabilities to generate labeling parameters for accurate classification.

Career Highlights

Xiaoying Tang is affiliated with The Johns Hopkins University, where she continues to push the boundaries of research in medical imaging. Her work has garnered attention for its potential to improve patient outcomes through enhanced imaging techniques. With 1 patent to her name, she exemplifies the spirit of innovation in her field.

Collaborations

Some of her notable coworkers include Michael I. Miller and Susumu Mori. Their collaborative efforts contribute to the advancement of research in anatomical imaging and related technologies.

Conclusion

Xiaoying Tang's contributions to automated anatomical labeling represent a significant advancement in medical imaging technology. Her innovative approach has the potential to transform how medical professionals interpret imaging data, ultimately benefiting patient care.

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