| Literature DB >> 36090454 |
Abstract
In this work, an improved Apriori algorithm is proposed. The main goal is to improve the processing efficiency of the algorithm, and the idea and process of the Apriori algorithm are optimized. The proposed method is compared with the classical association rule algorithm to verify its effectiveness. Traditional Chinese medicine plays a certain role in the prevention and treatment of COVID-19. In order to deeply mine the association rules between Chinese herbal medicines for the prevention and treatment of COVID-19, this improved Apriori algorithm is applied from the retrieved published scientific literature and the guidelines for the prevention and treatment of COVID-19 published all over China. Based on the representation of traditional Chinese medicine data in binary form, the potential core traditional Chinese medicine combinations in the treatment of COVID-19 are identified. The results of association rules of Chinese herbal medicine data obtained from the real database provide an important reference for the analysis of COVID-19 combined treatment of Chinese herbal medicine.Entities:
Mesh:
Substances:
Year: 2022 PMID: 36090454 PMCID: PMC9452996 DOI: 10.1155/2022/6337082
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 3.822
Comparison of publications according to their contents.
| Studies | Year | Description | Field | Characteristic of algorithm |
|---|---|---|---|---|
| Shumin et al. [ | 2022 | Collect natural driving data, extract risk conditions, and analyze the direction and intensity of risk influencing factors with the confidence of association rules of the Apriori algorithm. | Road traffic driving | Ordinary Apriori algorithm |
|
| ||||
| Weidi et al. [ | 2021 | The Apriori algorithm is used to analyze the causal association rules of bridge deterioration in Yunnan Province | Bridge construction | Genetic algorithm and grey correlation analysis solve the problem of the value of support and confidence in the Apriori algorithm |
|
| ||||
| Luo et al. [ | 2021 | Based on the scores and employment information data of higher vocational college graduates during their school years, this article uses the Apriori algorithm to analyze the correlation between school performance and actual employment. | Education | Ordinary Apriori algorithm |
|
| ||||
| Wu [ | 2019 | The power optical transmission network uses the Apriori algorithm to screen and retain the alarm items and fault items that occur infrequently but are actually very dangerous. | The power optical transmission network | Weighted Apriori algorithm |
|
| ||||
| Luo et al. [ | 2018 | Find frequent patterns in live transportation data by using association rule mining of the FP-growth algorithm. | Public transport ride | FP-growth algorithm |
|
| ||||
| Tan et al. [ | 2021 | The Apriori algorithm is used to analyze the acupoint combination of acupuncture and moxibustion in the treatment of impotence | Chinese acupuncture for impotence. | Ordinary Apriori algorithm |
|
| ||||
| Zhang et al. [ | 2021 | The Apriori algorithm is used to analyze the acupoint combination of acupuncture and moxibustion in the treatment of optic atrophy | Chinese acupuncture for optic atrophy. | Ordinary Apriori algorithm |
|
| ||||
| Lijuan et al. [ | 2016 | The Apriori algorithm is used to analyze the combination of Chinese herbal medicine for treating hypertension | Traditional Chinese medicine treatment. | Ordinary Apriori algorithm |
|
| ||||
| Yili Nurmaiti et al. [ | 2016 | The Apriori algorithm is used to analyze the combination of Chinese herbal medicine for treating coronary heart disease. | Traditional Chinese medicine treatment. | Ordinary Apriori algorithm |
|
| ||||
| Wu et al. [ | 2016 | The Apriori algorithm is used to analyze the prescription containing licorice by Yan Zhenghua, a master of Chinese medicine. | Traditional Chinese medicine treatment. | Ordinary Apriori algorithm |
|
| ||||
| Hai et al. [ | 2016 | The Apriori algorithm is used to analyze the law of ancient laxative prescriptions. | Traditional Chinese medicine treatment. | Ordinary Apriori algorithm |
|
| ||||
| Wang et al. [ | 2016 | The Apriori algorithm is used to analyze the combination of Chinese herbal medicine by lidongyuan. | Traditional Chinese medicine treatment. | Ordinary Apriori algorithm |
Traditional Chinese medicine prevention and treatment plan.
| No. | City | Plan |
|---|---|---|
| 1 | Beijing | Notice of Beijing Municipal Administration of traditional Chinese medicine on printing and distributing the “Beijing New Coronavirus Pneumonia Prevention and Treatment Program of Traditional Chinese Medicine (Trial Version 5)” |
| 2 | Tianjin | Tianjin new coronary virus pneumonia traditional Chinese medicine prevention and treatment plan (trial version 3) |
| 3 | Shandong | Notice of Shandong Provincial Health Commission on printing and distributing the “Shandong Province New Coronavirus Pneumonia Prevention and Treatment Program of Traditional Chinese Medicine” |
| 4 | Henan | Henan's new coronary pneumonia TCM prevention program |
| 5 | Gansu | Notice on issuing the prevention and control plan of traditional Chinese medicine for the normalization of the new coronary pneumonia epidemic in Gansu Province |
| 6 | Guangdong | Traditional Chinese medicine treatment program for new coronavirus pneumonia in Guangdong Province (trial version 2) |
| 7 | Shaanxi | Shaanxi issued a Chinese medicine treatment plan for pneumonia caused by new coronavirus infection (trial version 2) |
| 8 | Hunan | Rehabilitation diagnosis and treatment program of traditional Chinese medicine for patients with new coronary pneumonia in Hunan Province (trial) |
| Hunan | TCM diagnosis and treatment plan for pneumonia caused by novel coronavirus infection in Hunan Province (trial version 3) | |
| 9 | Sichuan | Sichuan new coronary pneumonia prevention and control guide of traditional Chinese medicine (fourth edition) |
| 10 | Jiangxi | Notice on printing and distributing the “Jiangxi Province Novel Coronavirus Pneumonia Prevention and Treatment Program of Traditional Chinese Medicine (Trial Version 3)” |
| 11 | Jilin | TCM treatment plan for pneumonia caused by novel coronavirus infection in Jilin Province (trial version 1) |
| 12 | Yunnan | Notice of the Yunnan Provincial Health Commission on printing and distributing the Chinese medicine prevention and treatment plan for pneumonia caused by new coronavirus infection (trial version 2) |
| 13 | Shanxi | Shanxi issued the “Province New Coronavirus Pneumonia Prevention and Treatment Plan with Traditional Chinese Medicine (Trial) |
| 14 | Hainan | Hainan Province new coronavirus pneumonia prevention and treatment plan with traditional Chinese medicine (public version, trial version 2) |
| 15 | Qinghai | Qinghai Province new coronavirus pneumonia prevention and treatment plan of Tibetan medicine (trial version 2) |
| 16 | Jiangsu | TCM syndrome differentiation and treatment plan for new coronavirus pneumonia in Jiangsu Province (trial version 3) |
| 17 | Ningxia | Ningxia Hui autonomous region new coronavirus pneumonia prevention and treatment plan with traditional Chinese medicine (trial) |
| 18 | Hebei | Notice on printing and distributing the pneumonia diagnosis and treatment plan for new coronavirus infection in Hebei Province (trial version 2) |
| 19 | Heilongjiang | Heilongjiang Province new coronavirus pneumonia prevention and treatment plan with traditional Chinese medicine (second edition) |
| 20 | Zhejiang | Zhejiang Province new coronavirus pneumonia recommended Chinese medicine prevention and treatment plan (trial version 4) |
| 21 | Guizhou | Guizhou Province new coronavirus pneumonia prevention and treatment of traditional Chinese medicine reference plan (second edition) |
| 22 | Chongqing | Recommended plan for the prevention and treatment of new coronavirus pneumonia in Chongqing with traditional Chinese medicine (trial version 2) |
| 23 | Mongolia | Notice of the office of the Inner Mongolia autonomous region Health Commission on printing and distributing the inner Mongolia autonomous region new coronavirus pneumonia Chinese medicine diagnosis and treatment plan (trial version 2) |
Figure 1Comparison of minimum support before and after improvement.
Figure 2Comparison of minimum confidence before and after improvement.
Figure 3Binary data diagram.
Figure 4Distribution of Chinese medicines used in the retrieved plans.
Figure 5Scatter plot for 4768 rules.
Top 20 Improved Apriori algorithm-based association rules of Chinese medicines.
| No. | LHS | RHS | Support | Confidence | Coverage | Lift | Count |
|---|---|---|---|---|---|---|---|
| [ | (Shengshigao) | -> (Xingren) | 0.15126050 | 0.7346939 | 0.20588235 | 2.534161 | 36 |
| [ | (Tinglizi) -> | (Shengshigao) | 0.10504202 | 0.8620690 | 0.12184874 | 4.187192 | 25 |
| [ | (Fabanxia) | -> (Fuling) | 0.10504202 | 0.7352941 | 0.14285714 | 2.573529 | 25 |
| [ | (Tinglizi) | -> (Xingren) | 0.09663866 | 0.7931034 | 0.12184874 | 2.735632 | 23 |
| [ | (Chishao) | -> (Gancao) | 0.09243697 | 0.8461538 | 0.10924370 | 2.165426 | 22 |
| [ | (Shengdihuang) | ->(Shengshigao) | 0.09243697 | 0.7857143 | 0.11764706 | 3.816327 | 22 |
| [ | (Caoguo) | -> (Cangzhu) | 0.08823529 | 0.7000000 | 0.12605042 | 3.702222 | 21 |
| [ | (Shengdihuang) | -> (Gancao) | 0.08403361 | 0.7142857 | 0.11764706 | 1.827957 | 20 |
| [ | (Shengshigao, Tinglizi) | -> (Xingren) | 0.08403361 | 0.8000000 | 0.10504202 | 2.759420 | 20 |
| [ | (Tinglizi, Xingren) | ->(Shengshigao) | 0.08403361 | 0.8695652 | 0.09663866 | 4.223602 | 20 |
| [ | (Mahuang) | -> (Xingren) | 0.07983193 | 0.8636364 | 0.09243697 | 2.978920 | 19 |
| [12] | (Fuling, Xingren) | -> (Huoxiang) | 0.07983193 | 0.7600000 | 0.10504202 | 2.318974 | 19 |
| [13] | (Huoxiang, Xingren) | -> (Fuling) | 0.07983193 | 0.7600000 | 0.10504202 | 2.660000 | 19 |
| [14] | (Wuweizi) | -> (Maidong) | 0.07563025 | 0.7826087 | 0.09663866 | 3.801242 | 18 |
| [15] | (Bohe) | -> (Lianqiao) | 0.07563025 | 0.7826087 | 0.09663866 | 3.267735 | 18 |
| [16] | (Binglang) | -> (Caoguo) | 0.07142857 | 0.9444444 | 0.07563025 | 4.492593 | 17 |
| [17] | (Baizhu) | -> (Chenpi) | 0.06722689 | 0.8000000 | 0.08403361 | 3.022222 | 16 |
| [18] | (Chenpi, Dangshen) | -> (Fuling) | 0.06722689 | 0.8888889 | 0.07563025 | 3.111111 | 16 |
| [19] | (Dangshen, Fuling) | -> (Chenpi) | 0.06722689 | 0.8000000 | 0.08403361 | 3.022222 | 16 |
| [20] | (Fuling, Houpu) | -> (Huoxiang) | 0.06722689 | 0.7619048 | 0.08823529 | 2.324786 | 16 |
Figure 6Grouped matrix for 20 association rules.