Disease symptom cognitive system based on abnormal wrinkles of human body
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A cognitive system and wrinkle technology, applied in the computer field, can solve problems such as reducing diagnosis time and threshold
Inactive Publication Date: 2020-10-23
中润普达(十堰)大数据中心有限公司
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[0005] In view of this, the present invention proposes a disease symptom cognition system based on abnormal wrinkles in the human body, aiming to solve the technical problem that the existing technology cannot reduce the diagnosis time and threshold and improve the diagnosis efficiency by establishing a learning model
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no. 3 example
[0074] Further, as image 3 As shown, based on the above-mentioned embodiments, a structural block diagram of the third embodiment of the present invention-based abnormal wrinkle-based disease symptom recognition system is proposed. In this embodiment, the learning model building module 20 also includes:
[0075] Combination algorithm unit 201, the combination algorithm is:
[0076] Z=(A∪B)-(A∩B);
[0077] Among them, Z is a new wrinkle set, A is a set established by extracting wrinkles with high frequency from normal wrinkles, and B is a set established by extracting wrinkles with high frequency from abnormal wrinkles.
[0078] It should be understood that, through this combined algorithm, the calculated new wrinkle set can contain all human wrinkle text descriptions, and using the new wrinkle set to establish a diagnostic model can diagnose wrinkles more accurately.
no. 4 example
[0079] Further, as Figure 4 As shown, based on the above-mentioned embodiments, a structural block diagram of the fourth embodiment of the present invention based on the abnormal wrinkle-based disease sign recognition system is proposed. In this embodiment, the diagnostic model module 30 includes:
[0080] The diagnostic model building module 301 is used to combine the abnormal wrinkle learning model and various disease symptom information sets to build a diagnostic model.
[0081] Further, as Figure 5 As shown, based on the above-mentioned embodiments, a structural block diagram of the fifth embodiment of the system for recognizing human body abnormal wrinkles based on disease signs is proposed. In this embodiment, the diagnosis module 40 includes:
[0082] The diagnosis report generation module 401 is used to obtain the information of abnormal wrinkles of the human body to be diagnosed, diagnose the information of abnormal wrinkles of the human body to be diagnosed accord...
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Abstract
The invention provides a disease symptom cognition system based on abnormal wrinkles of a human body. The system comprises: a data acquisition module, which is used for acquiring human body wrinkle information and various corresponding disease symptom information sets; a learning model construction module, which is used for establishing a combination algorithm, calculating the human body wrinkle information according to the combination algorithm and establishing an abnormal wrinkle learning model according to a calculation result; a diagnosis model module, which is used for establishing a diagnosis model according to the abnormal wrinkle learning model and the various disease symptom information sets; and a diagnosis module, which is used for acquiring the abnormal wrinkle information of ato-be-diagnosed human body and diagnosing the abnormal wrinkle information of the to-be-diagnosed human body according to the diagnosis model. According to the method, the human body wrinkle information is calculated by establishing the combination algorithm, and the diagnosis model is generated by combining various disease symptom information sets, so the abnormal wrinkles of the human body canbe quickly diagnosed, diagnosis efficiency is improved, and a diagnosis threshold is reduced.
Description
technical field [0001] The invention relates to the field of computer technology, in particular to a disease symptom cognition system based on abnormal human body wrinkles. Background technique [0002] Wrinkles are the embodiment of human aging, but wrinkles can also be divided into normal and abnormal. Abnormal wrinkles are closely related to human health and diseases. Abnormal wrinkles in different parts indicate different diseases. Diagnosis of abnormal wrinkles in different parts of the human body can preliminarily judge the human body. health status. [0003] Traditional medicine’s method of wrinkle diagnosis is mainly based on long-term experience, using the methods of looking, smelling, asking, and cutting, so as to speculate on the health status and disease symptoms that may appear after abnormal wrinkles in the body, but this method often has a high impact on doctors. Therefore, there is an urgent need for a disease symptom recognition system based on abnormal wri...
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