Patents by Inventor Zhuoyu LI

Zhuoyu LI has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11605163
    Abstract: An automatic abnormal cell recognition method, the method including: 1) scanning a slide using a digital pathological scanner and obtaining a cytological slide image; 2) obtaining a set of centroid coordinates of all nuclei that is denoted as CentroidOfNucleus by automatically localizing nuclei of all cells in the cytological slide image using a feature fusion based localizing method; 3) obtaining a set of cell square region of interest (ROI) images that are denoted as ROI_images; 4) grouping all cell images in the ROI_images into different groups based on sampling without replacement, where each group contains ROW×COLUMN cell images with preset ROW and COLUMN parameters; obtaining a set of splice images; and 5) classifying all cell images in the splice image simultaneously by using the splice image as an input of a trained deep neural network; and recognizing cells classified as abnormal categories.
    Type: Grant
    Filed: August 25, 2020
    Date of Patent: March 14, 2023
    Assignee: WUHAN UNIVERSITY
    Inventors: Juan Liu, Jiasheng Liu, Zhuoyu Li, Chunbing Hua
  • Publication number: 20220188573
    Abstract: The present disclosure provides an end-to-end attention pooling-based classification method for histopathological images. The method specifically includes the following steps: S1, cutting the histopathology image into patches of a specified size, removing the patches with too much background area and packaging the remaining patches into a bag; S2, training a deep learning network by taking the bag obtained in S1 as an input using a standard multi-instance learning method; S3, scoring all the patches by using the trained deep learning network, and selecting m patches with highest and lowest scores for each whole slide image to form a new bag; S4, building a deep learning network including an attention pooling module, and training the network by using the new bag obtained in S3; and S5, after the histopathology image to be classified is processed in S1 and S3, performing classification by using the model obtained in S4.
    Type: Application
    Filed: December 9, 2021
    Publication date: June 16, 2022
    Inventors: Juan Liu, Zhiqun Zuo, Yuqi Chen, Zhuoyu Li, Jing Feng
  • Patent number: 11227143
    Abstract: An automatic classification method of whole slide images (WSIs) for cervical tissue pathology based on confidence coefficient selection. The automatic classification method includes steps: S1: dividing the WSIs for the cervical tissue pathology into small pieces having set size, gathering the small pieces of each WSI into a packet, and removing blank pieces in the packets; S2: building a deep CNN model; S3: training the deep CNN for designated rounds; S4: performing sequential arrangement and connection to obtain feature vectors of WSIs by using the trained deep CNN as the feature extractor; S5: training a support vector machine classifier; and S6: processing the WSIs for the cervical tissue pathology, to be classified, through step S1 and step S4 to obtain the feature vectors of the images, and inputting the feature vectors into the trained support vector machine classifier to realize classification.
    Type: Grant
    Filed: September 21, 2020
    Date of Patent: January 18, 2022
    Assignee: Wuhan University
    Inventors: Juan Liu, Zhuoyu Li, Jing Feng, Zhiqun Zuo
  • Publication number: 20210271852
    Abstract: An automatic classification method of whole slide images (WSIs) for cervical tissue pathology based on confidence coefficient selection. The automatic classification method includes steps: S1: dividing the WSIs for the cervical tissue pathology into small pieces having set size, gathering the small pieces of each WSI into a packet, and removing blank pieces in the packets; S2: building a deep CNN model; S3: training the deep CNN for designated rounds; S4: performing sequential arrangement and connection to obtain feature vectors of WSIs by using the trained deep CNN as the feature extractor; S5: training a support vector machine classifier; and S6: processing the WSIs for the cervical tissue pathology, to be classified, through step S1 and step S4 to obtain the feature vectors of the images, and inputting the feature vectors into the trained support vector machine classifier to realize classification.
    Type: Application
    Filed: September 21, 2020
    Publication date: September 2, 2021
    Inventors: Juan Liu, Zhuoyu LI, Jing Feng, Zhiqun Zuo
  • Publication number: 20210065367
    Abstract: An automatic abnormal cell recognition method, the method including: 1) scanning a slide using a digital pathological scanner and obtaining a cytological slide image; 2) obtaining a set of centroid coordinates of all nuclei that is denoted as CentroidOfNucleus by automatically localizing nuclei of all cells in the cytological slide image using a feature fusion based localizing method; 3) obtaining a set of cell square region of interest (ROI) images that are denoted as ROI_images,; 4) grouping all cell images in the ROI_images into different groups based on sampling without replacement, where each group contains ROW×COLUMN cell images with preset ROW and COLUMN parameters; obtaining a set of splice images; and 5) classifying all cell images in the splice image simultaneously by using the splice image as an input of a trained deep neural network; and recognizing cells classified as abnormal categories.
    Type: Application
    Filed: August 25, 2020
    Publication date: March 4, 2021
    Inventors: Juan LIU, Jiasheng LIU, Zhuoyu LI, Chunbing HUA
  • Publication number: 20210008142
    Abstract: Disclosed are a preparation method and applications of a spinosin-Na monomer of Ziziphi Spinosae Semen. The preparation method includes: pulverizing Ziziphi Spinosae Semen; hydrolyzing the powder with an acidic hydrolysis solution; neutralizing the hydrolysate; extracting the supernatant with ethyl acetate several times to produce a crude extract; and separating the crude extract sequentially using macroporous resin and HPLC to produce the spinosin-Na monomer of Ziziphi Spinosae Semen with a good water solubility and a purity greater than 98%. The spinosin-Na monomer prepared herein is capable of significantly inhibiting the proliferation of tumor cells, so that it can be applied in the preparation of a functional food and/or medicine for preventing and/or treating tumors.
    Type: Application
    Filed: January 12, 2020
    Publication date: January 14, 2021
    Inventors: Zhuoyu LI, Shuhua SHAN, Guisheng SONG, Yue XIE, Hanqing LI, Bin JIA, Jiangying SHI
  • Publication number: 20200355578
    Abstract: A tissue chip core-making system based on image recognition and positioning and a core-making method thereof—includes a cutting system and a computer control system. The cutting system includes a numerical control cutting machine, XYZ-axis translation worktables, a 360° rotation turntable, a recipient wax block rack, a freezing table and an image recognition and positioning module. A core-making process based on the core-making system includes: lofting, sample position recognition, tissue sample image acquisition, tissue sample image processing, cutting parameter setting, tissue sample cutting, tissue core information recognition and storage to obtain a tissue core with information traceability. The method obtains a coring region through visual recognition, and has the characteristics of high automation degree and high work efficiency.
    Type: Application
    Filed: June 13, 2018
    Publication date: November 12, 2020
    Applicant: THE THIRD XIANGYA HOSPITAL OF CENTRAL SOUTH UNIVERSITY
    Inventors: Bo LIU, Zhen WANG, Kehua GUO, Jian KANG, Xiangzhi SONG, Zhepeng XIAO, Zhuoyu LI, Kexin LONG, Lihua HUANG, Yichen GUO, Chaoyang SHEN