CROSS-DEPARTMENTAL CHRONIC KIDNEY DISEASE EARLY DIAGNOSIS AND DECISION SUPPORT SYSTEM BASED ON KNOWLEDGE GRAPH

    公开(公告)号:US20220093268A1

    公开(公告)日:2022-03-24

    申请号:US17541301

    申请日:2021-12-03

    Applicant: ZHEJIANG LAB

    Abstract: Provided is a cross-departmental decision support system for early diagnosis of a chronic kidney disease based on knowledge graph, which comprises a patient information model building module, a patient information model library storage module, a knowledge graph association module, a knowledge graph inference module and a decision support feedback module. According to the present application, by constructing a patient information model and utilizing an OMOP CDM standard terminology system, patient electronic medical record data is constructed into a patient information model with unified concept coding and unified semantic structure; making full use the advantages of semantic technology in data interactivity and scalability, so that the system has better adaptability and scalability to heterogeneous data in different hospitals.

    METHOD AND APPARATUS OF NER-ORIENTED CHINESE CLINICAL TEXT DATA AUGMENTATION

    公开(公告)号:US20240013000A1

    公开(公告)日:2024-01-11

    申请号:US18348317

    申请日:2023-07-06

    Applicant: ZHEJIANG LAB

    CPC classification number: G06F40/295 G06F40/169 G06F40/30 G06F40/40 G06F40/284

    Abstract: Disclosed is a method and an apparatus NER-orientated Chinese clinical text data augmentation, and unannotated data and annotated data of label linearization processing through data preprocessing. A concealed part is predicted based on retained information by using the unannotated data and concealing part of information in text, and meanwhile an entity word-level discrimination task is introduced for pre-training of a span-based language model; and a plurality of decoding mechanisms are introduced in a fine-tune stage, a relationship between a text vector and text data is obtained based on the pre-trained span-based language model, linearized data with entity labels is converted into the text vector, and text generation is performed through forward decoding and reverse decoding in a prediction stage of a text generation model to obtain enhanced data with annotation information.

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