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Qi Zhang

Researcher at Fudan University

Publications -  131
Citations -  2439

Qi Zhang is an academic researcher from Fudan University. The author has contributed to research in topics: Medicine & Ultrasound. The author has an hindex of 20, co-authored 100 publications receiving 1563 citations. Previous affiliations of Qi Zhang include Minjiang University & Duke University.

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Automatic Segmentation of Calcifications in Intravascular Ultrasound Images Using Snakes and the Contourlet Transform

TL;DR: The proposed image segmentation method based on snakes and the Contourlet transform can automatically and accurately detect calcifications and delineate their boundaries, and it outperformed a recently proposed method, the Santos Filho method, in terms of the sensitivity and specificity of calcification detection.
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Sparse kernel entropy component analysis for dimensionality reduction of biomedical data

TL;DR: A sparse KECA (SKECA) algorithm based on a recursive divide-and-conquer (DC) method that outperforms conventional dimensionality reduction algorithms, even for high order dimensional features, suggests that SKECA is potentially applicable to biomedical data processing.
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Dual-mode artificially-intelligent diagnosis of breast tumours in shear-wave elastography and B-mode ultrasound using deep polynomial networks.

TL;DR: It is demonstrated that the dual-modal AI-based technique with DPN has the potential for breast tumor classification in future clinical practice.
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Spatio-temporal Quantification of Carotid Plaque Neovascularization on Contrast Enhanced Ultrasound: Correlation with Visual Grading and Histopathology

TL;DR: Both spatial and temporal analysis on CEUS can accurately assess IPN and combining them provides better IPN assessment and may be useful for plaque vulnerability evaluation and risk stratification.
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Multi-channel EEG-based sleep stage classification with joint collaborative representation and multiple kernel learning.

TL;DR: The two-stage multi-view learning based sleep staging framework outperforms all other classification methods compared in this work, while JCR is superior to JSR.