| Literature DB >> 22567030 |
Peng Lu1, Jianxin Chen, Huihui Zhao, Yibo Gao, Liangtao Luo, Xiaohan Zuo, Qi Shi, Yiping Yang, Jianqiang Yi, Wei Wang.
Abstract
Coronary artery disease (CAD) is the leading causes of deaths in the world. The differentiation of syndrome (ZHENG) is the criterion of diagnosis and therapeutic in TCM. Therefore, syndrome prediction in silico can be improving the performance of treatment. In this paper, we present a Bayesian network framework to construct a high-confidence syndrome predictor based on the optimum subset, that is, collected by Support Vector Machine (SVM) feature selection. Syndrome of CAD can be divided into asthenia and sthenia syndromes. According to the hierarchical characteristics of syndrome, we firstly label every case three types of syndrome (asthenia, sthenia, or both) to solve several syndromes with some patients. On basis of the three syndromes' classes, we design SVM feature selection to achieve the optimum symptom subset and compare this subset with Markov blanket feature select using ROC. Using this subset, the six predictors of CAD's syndrome are constructed by the Bayesian network technique. We also design Naïve Bayes, C4.5 Logistic, Radial basis function (RBF) network compared with Bayesian network. In a conclusion, the Bayesian network method based on the optimum symptoms shows a practical method to predict six syndromes of CAD in TCM.Entities:
Year: 2012 PMID: 22567030 PMCID: PMC3328975 DOI: 10.1155/2012/142584
Source DB: PubMed Journal: Evid Based Complement Alternat Med ISSN: 1741-427X Impact factor: 2.629
Figure 1Histogram of syndromes of TCM.
Symptom list.
| Symptoms of comprehensive subset | |||||
|---|---|---|---|---|---|
| Symptoms of TCM subset | Symptoms of western medicine | ||||
| (1) Chest pain | (21) Sighing | (41) Frothy sputum | (61) Red eye | (79) ST normal | (97) Ef |
| (2) Oppression in chest | (22) Depression | (42) Pharyngeal foreign body | (62) Deep-colored eye weeks | (80) ST lower than | (98) A/e |
| (3) Shortness of breath | (23) Inappetence | (43) Thirst without large fluid intake | (63) Eyelids swelling | (81) ST greater than 0.1 | (99) Wall motion |
| (4) Palpitation | (24) Abdominal distension | (44) Tastelessness | (64) Dark red lip and gingivitis | (82) ST limb breast high | (100) Valve regurgitation |
| (5) Cough | (25) Ruffian of epigastrium | (45) Bitter taste in mouth | (65) Light-colored lip and methyl | (83) ECG | (101) Regurgitant degree |
| (6) Chilly sensation and the cold limbs | (26) Belching | (46) Sweet taste in mouth | (66) Deep-colored palate mucosa | (84) Q wave | (102) Leukocyte |
| (7) Tiredness and fatigue | (27) Nausea and vomiting | (47) Salty taste in mouth | (67) Less abdominal pressure | (85) Frequent extrasystole | (103) Neutral % |
| (8) Spontaneous sweating | (28) Loose stool | (48) Sticky and greasy sensation in mouth | (68) Lower extremity edema | (86) High left ventricular voltage | (104) Lymph % |
| (9) Night sweating | (29) Constipation | (49) Morning diarrhea | (69) Faint low voice | (87) T wave | (105) Erythrocyte |
| (10) Dysphoria with feverish sensation in chest, palms, and | (30) Soreness and weakness of waist and knees | (50) Powerless in defecation | (70) Atrophy | (88) Diameter of main root | (106) Hemoglobin |
| (11) Dry eyes | (31) Frequent urination at night | (51) Deep-colored urine | (71) Tongue quality | (89) Main pulmonary | (107) Platelet |
| (12) Dry mouth | (32) Limb numbness | (52) Clear urine in large amounts | (72) Patchy petechia and ecchymosis | (90) Left atrial dimension | (108) Fasting plasma glucose |
| (13) Dizziness | (33) Heel pain | (53) Residual urine | (73) Tongue body | (91) Interventricular septum thickness | (109) TG |
| (14) Amnesia | (34) Hemiplegic limbs | (54) Coldness in abdomen and waist | (74) Quality of tongue coating | (92) Pulsatile range | (110) TG |
| (15) Vertigo | (35) Subcutaneous ecchymosis | (55) Heavy limbs | (75) Color of tongue coating | (93) End-diastolic diameter | (111) HDL |
| (16) Tinnitus | (36) Rough skin | (56) Pale complexion | (76) Body fluid on tongue coating | (94) Systolic diameter | (112) LDL |
| (17) Facial flush | (37) Obesity | (57) Suddenly white complexion | (77) Vein color | (95) Right ventricular diameter | (113) Fibrinogen |
| (18) Insomnia | (38) White phlegm | (58) Darkish complexion | (78) Vein type | (96) Outflow tract | |
| (19) Fussy temper and irascibility | (39) Yellow phlegm | (59) Sallow complexion | |||
| (20) Distending pain in the hypochondria | (40) Blood in the sputum | (60) Flushing | |||
Ranked symptoms by means of SVM feature selection.
| Dataset | Rank list of NO. symptom |
|---|---|
| TCM | 75, 8, 73, 52, 36, 50, 22, 54, 40, 31, 13, 26, 30, 42, 23, 74, 71, 6, 49, 27, 7, 25, 78, 11, 20, 35, 4, 60, 34, 65, 10, 72, 33, 32, 59, 63, 9, 3, 67, 61, 57, 17, 18, 66, 64, 43, 5, 45, 76, 19, 38, 77, 16, 24, 2,28, 14, 44, 62, 56, 70, 55, 1, 68, 53, 29, |
|
| |
| WM | 17, 27, 26, 30, 13, 20, 18, 15, 11, 29, 16, 14, 12, 10, 7, 35, 33, 24, 22, 31, 5, 28, 34, 25, 19, 23, 4, 9, 32, 8, 3, 6, 1, 2, 21 |
|
| |
| Comprehensive | 95, 71, 102, 108, 92, 78, 107, 101, 73, 7, 97, 40, 27, 8, 82, 22, 85, 75, 31, 23, 74, 109, 103, 42, 30, 5, 10, 35, 106, 50, 6, 52, 65, 11, 57, 20, 89, 18, 13, 81, 113, 111, 79, 77, 36, 54, 9, 104, 67, 60, 44, 25, 72, 64, 83, 16, 3, 59, 24, 32, 21, 49, |
Figure 2Relationship between AUC and symptom number in the TCM subset.
Figure 3Relationship between AUC and symptom number in the western medicine subset.
Figure 4Relationship between AUC and symptom number in the comprehensive subset.
Figure 5Comparative results of weighted AUC by using SVM and Markov blanket methods.
Figure 6Comparative results of syndrome prediction using the Bayesian network classifier.
Results of syndrome prediction based on Bayesian network.
| Index | ||||
|---|---|---|---|---|
| Syndrome | Weighted precision | Weighted recall | Weighted | Weighted AUC |
| Blood stasis | 0.763 | 0.761 | 0.762 | 0.811 |
| Phlegm turbidity | 0.740 | 0.746 | 0.742 | 0.791 |
| Qi deficiency | 0.750 | 0.747 | 0.748 | 0.766 |
| Yin deficiency | 0.656 | 0.663 | 0.640 | 0.589 |
| Yang deficiency | 0.926 | 0.926 | 0.926 | 0.946 |
| Kidney deficiency | 0.735 | 0.728 | 0.731 | 0.766 |
Figure 7Comparative results of syndrome prediction with five classifiers.