| Literature DB >> 35035818 |
Abstract
This study is based on the analysis of the status quo of the research on liver cancer syndromes, starting with the clinical objective and true four-diagnosis information of TCM inpatients with primary liver cancer, using computer data mining technology to analyze and summarize the syndrome rules from the bottom to the top. Let the data itself show the essence of liver cancer syndrome. First, with the help of hierarchical cluster analysis, we can understand the general characteristics through the rough preliminary classification of the four-diagnosis information of liver cancer patients. Then, with the help of the emerging and mature hidden structure model analysis in recent years, through data modeling, the classification of common syndromes of liver cancer and the corresponding relationship with the four-diagnosis information are comprehensively analyzed. Finally, considering the inherent shortcomings of implicit structure and hierarchical clustering based on the assumption that there is a unique one-to-one correspondence between the four diagnostic information factors and the class (or hidden class) when classifying, we plan to use factor analysis and joint cluster analysis, as supplementary means to further explore the classification of liver cancer syndromes and the corresponding relationship with the four-diagnosis information.Entities:
Mesh:
Year: 2022 PMID: 35035818 PMCID: PMC8759870 DOI: 10.1155/2022/2629509
Source DB: PubMed Journal: J Healthc Eng ISSN: 2040-2295 Impact factor: 2.682
Figure 1Information curve graph of hidden variable Z1.
Class probability distribution table of implicit probability Z1.
| Item |
|
|
|---|---|---|
| Gastric cavity swelling | 87 | 60 |
| Stomach cold | 92 | 52 |
| Flank rib pain | 70 | 80 |
| Gastric cavity pain | 98 | 31 |
| Dizziness | 90 | 45 |
| Chest tightness | 96 | 33 |
| Bloating | 91 | 25 |
Figure 2Information curve graph of hidden variable Z2.
Class probability distribution table of implicit probability Z2.
| Item |
|
|
|---|---|---|
| Pulse string | 92 | 78 |
| Greasy fur | 81 | 72 |
| Slippery pulse | 97 | 28 |
| Yellow urine | 51 | 34 |
Figure 3Information curve graph of hidden variable Z3.
Class probability distribution table of implicit probability Z3.
| Item |
|
|
|---|---|---|
| Pulse string | 86 | 78 |
| Labial nail cyan | 96 | 55 |
| Liver palm spider nevus | 97 | 29 |
| Purple tongue | 79 | 65 |
| Slippery pulse | 97 | 29 |
| Fat tooth mark tongue | 79 | 51 |
Figure 4Information curve graph of hidden variable Z4.
Class probability distribution table of implicit probability Z4.
| Item |
|
|
|---|---|---|
| Dry mouth | 89 | 76 |
| Bitter mouth | 93 | 62 |
| Yellow urine | 88 | 60 |
| Hot hands, feet, and heart | 97 | 32 |
| Thirsty | 100 | 20 |
Figure 5Information curve graph of hidden variable Z5a.
Class probability distribution table of implicit probability Z5.
| Item |
|
|
|---|---|---|
| Thin pulse | 83 | 79 |
| Dull complexion | 58 | 86 |
| Loose stools | 91 | 39 |
| Weak pulse | 93 | 37 |
| Tinnitus | 97 | 28 |
Figure 6Information curve graph of hidden variable Z5b.
Class probability distribution table of implicit probability Z5b.
| Item |
|
|
|---|---|---|
| Dry mouth | 95 | 41 |
| Fatigue | 88 | 29 |
| Sore waist and knees | 97 | 59 |
| Bitter mouth | 93 | 57 |
| Insomnia | 94 | 62 |
| Frequent nocturia | 95 | 63 |