Method and system for generating DIP comprehensive disease category directory based on big data clustering
A big data and data technology, applied in the field of generating DIP comprehensive disease catalog based on big data clustering, can solve the problems of not publishing the comprehensive catalog and being unable to formulate and use the catalog, so as to improve accuracy, implementation efficiency, and good fitting cost Effect
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Embodiment 1
[0033] Such as figure 1 As shown, Embodiment 1 of the present disclosure provides a method for generating a DIP comprehensive disease catalog based on big data clustering, including the following steps:
[0034] S1: Manage the data on the first page of medical records.
[0035] S1.1: Firstly, the data on the front page of the medical records are included in the core disease catalog issued by the state, and the data that cannot be included in the core disease catalog group are taken out for processing and rectification;
[0036] S1.2: Adjust the coding format, and map the main diagnosis of the "National Clinical Edition 2.0 Disease Diagnosis Code (ICD-10)" on the homepage of the medical record to "Medical Insurance Disease Diagnostic Classification and Code (ICD-10)", and "National "Clinical version 2.0 Surgical Operation Code (ICD-9-CM3)" is mapped to "Medical Insurance Surgical Operation Classification and Coding (ICD-9-CM-3)";
[0037] S1.3: Discard the data containing wro...
Embodiment 2
[0054] Embodiment 2 of the present disclosure provides a system for generating a DIP comprehensive disease catalog based on big data clustering, including:
[0055] The data acquisition module is configured to: acquire medical record data, and preprocess the acquired medical record data;
[0056] The data segmentation module is configured to: divide the data into a plurality of sub-data, and assign a corresponding number of Map functions;
[0057] The data clustering module is configured as: the stage of the data Map, clustering the sub-data;
[0058] The data merging module is configured as follows: In the data reduction stage, the Map results of the sub-data are merged to obtain the final DIP comprehensive disease catalog.
[0059] The working method of the system is the same as the method for generating the DIP comprehensive disease catalog based on big data clustering provided in Example 1, and will not be repeated here.
Embodiment 3
[0061] Embodiment 3 of the present disclosure provides a computer-readable storage medium, on which a program is stored. When the program is executed by a processor, the method of generating a DIP comprehensive disease catalog based on big data clustering as described in Embodiment 1 of the present disclosure is realized. Steps in the method, the steps being:
[0062] Obtain medical record data and preprocess the acquired medical record data;
[0063] Divide the data into multiple sub-data, and assign the corresponding number of Map functions;
[0064] In the data Map stage, the sub-data is clustered;
[0065] In the data reduction stage, the Map results of the sub-data are merged to obtain the final DIP comprehensive disease catalog.
[0066] The detailed steps are the same as the method for generating the DIP comprehensive disease catalog based on big data clustering provided in Example 1, and will not be repeated here.
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