Title: COMP201 Java Programming
1An Evidence-Based Approach to TCM Patient Class
Definition and Differentiation
Nevin L. Zhang The Hong Kong Univ. of Sci.
Tech. http//www.cse.ust.hk/lzhang
- Joint Work with
- HKUST Yuan Shihong, Chen
Tao, Wang Yi, Liu Tengfei, Poon Kin Man, Liu Hua - Beijing TCM U Wang Tianfang, Zhao Yan, Xu
Wenjie, Wang Qingguo - Shanghai TCM U Xu Zhaoxia, Wang Yiqing
- Academy of TCM Zhou Xuezhong, Zhang Runshun,
Gong Yanbin, He Liyun, Wang Jie, Liu Baoyan - Beijing Dongfang Hospital Zhang Yongling, Chen
Boxing, Fu Chen
2TCM is Worthy of Research
- Traditional Chinese Medicine (TCM) is important
to the Chinese people. - Culture tradition
- Health care
- It is used by many others. WHO report
- Annual global herbal medicine market US60
billion - Traditional medicine treatment at least once in
life - 90 of Canadian, 49 of French people,
- 48 of Australians, 42 of Americans.
3Spectrum of TCM Research
A visit to TCM Doctor
Patient Information Collection Inspection (?)) Auscultation Olfaction (?)) Inquiry (?)) Palpation (?))
Patient Classification Syndrome differentiation (??) Determine pattern of disharmony
Treatment Herbal medicine Acupuncture Tui Na, Cupping, Qigong, .., etc
4Spectrum of TCM Research
A visit to TCM Doctor Research
Patient Information Collection Inspection (?)) Auscultation Olfaction (?)) Inquiry (?)) Palpation (?)) Instruments .
Patient Classification Syndrome differentiation (??) Determine pattern of disharmony
Treatment Herbal medicine Acupuncture Tui Na, Cupping, Qigong, .., etc
5Spectrum of TCM Research
A visit to TCM Doctor Research
Patient Information Collection Inspection (?)) Auscultation Olfaction (?)) Inquiry (?)) Palpation (?)) Instruments .
Patient Classification Syndrome differentiation (??) Determine pattern of disharmony
Treatment Herbal medicine Acupuncture Tui Na, Cupping, Qigong, .., etc Efficacy Effective component of herbs Action mechanism of herbs Safety issue .
6Spectrum of TCM Research
A visit to TCM Doctor Research
Patient Information Collection Inspection (?)) Auscultation Olfaction (?)) Inquiry (?)) Palpation (?)) Instruments .
Patient Classification Syndrome differentiation (??) Determine pattern of disharmony Supervised learning Labeled Data Symptoms signs, class labels assigned by expert
Treatment Herbal medicine Acupuncture Tui Na, Cupping, Qigong, .., etc Efficacy Effective component of herbs Action mechanism Safety .
7Spectrum of TCM Research
A visit to TCM Doctor Research
Patient Information Collection Inspection (?)) Auscultation Olfaction (?)) Inquiry (?)) Palpation (?)) Instruments .
Patient Classification Syndrome differentiation (??) Determine pattern of disharmony Supervised learning Labeled Data Symptoms signs, class labels assigned by expert Our work cluster analysis Unlabeled Data symptoms signs
Treatment Herbal medicine Acupuncture Tui Na, Cupping, Qigong, .., etc Efficacy Effective component of herbs Action mechanism Safety .
8Use of TCM to Treat Western Medicine Diseases
- Common practice in China
- Patients of a WM disease subdivided into several
TCM classes - Different classes are treated differently.
- Example
- WM disease Depression
- TCM Classes
- Liver-Qi Stagnation (????). Treatment principle
????, Prescription ????? - Deficiency of Liver Yin and Kidney Yin
(?????)Treatment principle ????, Prescription
????????? - Vacuity of both heart and spleen (????).
Treatment principle ????, Prescription ??? - .
9Key Question
- How should patients of a WM disease be divided
into subclasses from the TCM perspective? - What TCM classes are there among patients of the
WM disease? - What are the characteristics of each TCM class?
- In practice, no consensus. Different researchers
use different schemes - Gao and Fang STAGNATION OF LIVER QI, SPIRIT
INJURED BY WORRY, and HEART-SPLEEN DUAL VACUITY. - You et al. LIVER DEPRESSION AND SPLEEN VACUITY,
HEART-SPLEEN DUAL VACUITY, and DEFICIENCY OF
LIVER-YIN AND KIDNEY-YIN. - Guo et al. LIVER DEPRESSION AND SPLEEN VACUITY,
LIVER BLOOD STASIS AND STAGNATION, HEART-SPLEEN
DUAL VACUITY, and SPLEEN AND KIDNEY DUAL VACUITY.
- Definition of the classes also vague
- Our objective Provide evidence for the TCM
sub-classing task through analysis clinic symptom
data so that some standard can be established.
10The Key Idea
Page 10
- Imagine sub-classing patients of a WM disease D
from TCM perspective
- Also providing a basis for defining the TCM class
Z and for differentiating class Z patients from
other D patients
11Outline
- Introduction
- Data Analysis Tool
- Case Study
- Another Perspective on the Results
- Conclusions
12Cluster Analysis
- Grouping of objects into clusters so that objects
in the same cluster are similar while objects
from different clusters are dissimilar.
- Result of clustering is often a partition of all
the objects.
13How to Cluster Those?
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14How to Cluster Those?
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Style of picture
15How to Cluster Those?
Page 15
Type of object in picture
16How to Cluster Those?
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- Complex data usually have multiple facets and be
meaningfully partitioned in multiple ways.
Multidimensional clustering / Multi-Clustering - TCM symptom data are complex and need
multidimensional clustering. - No previous methods can perform multidimensional
clustering. - So, we developed our own method.
- It is a model-based method
- Latent tree models
17Latent Tree Models
- Tree-structured probabilistic graphical model
- Leaf nodes represents observed variables
- Internal nodes represent latent variables
- Links represents dependence and quantified by
probability distributions - Generalization of latent class models
18Latent Tree Analysis
From data on observed variables, obtain latent
tree model
- Learning latent tree models Determine
- Number of latent variables
- Number of possible states for each latent
variable - Model Structure
- Conditional probability distributions
- Algorithmic work http//www.cse.ust.hk/lzhang/lt
m/index.htm
19Latent Tree Analysis Multidimensional Clustering
- Each latent variable gives a partition
- Y1(Analytic Skill) cluster 1 (low), cluster 2
(high) - Y2 (Literal skill) cluster 1 (low), cluster
2 (high)
20Outline
- Introduction
- Data Analysis Tool
- Case Study
- Another Perspective on the Results
- Conclusions
21Case Study Depression
- Subjects
- 604 depressive patients aged between 19 and 69
from 9 hospitals - Selected using the Chinese classification of
mental disorder clinic guideline CCMD-3 - Exclusion
- Subjects we took anti-depression drugs within two
weeks prior to the survey women in the
gestational and suckling periods, .. etc - Symptom variables
- From the TCM literature on depression between
1994 and 2004. - Searched with the phrase ?? and ? on the
CNKI (China National Knowledge Infrastructure)
data - Kept only those on studies where patients were
selected using the ICD-9, ICD-10, CCMD-2, or
CCMD-3 guidelines. - 143 symptoms reported in those studies altogether.
22The Depression Data
- Data as a table
- 604 rows, each for a patient
- 143 columns, each for a symptom
- Table cells 0 symptom not present, 1 symptom
present - Removed Symptoms occurring lt10 times
- 86 symptoms variables entered latent tree
analysis. - Structure of the latent tree model obtained on
the next two slides.
23Model Obtained for a Depression Data (Top)
24Model obtained for a Depression Data (Bottom)
25Question
- Each latent variable gives a partition of the
patients. - Do the partitions provide evidence for the
following questions - What TCM classes are there among depressive
patients? - What are the characteristics of each of the
classes?
26The Empirical Partitions
- The first cluster (Y29 s0) consists of 54 of
the patients and while the cluster (Y29 s1)
consists of 46 of the patients. - The two symptoms fear of cold and cold limbs
do not occur often in the first cluster - While they both tend to occur with high
probabilities (0.8 and 0.85) in the second
cluster.
27Probabilistic Symptom co-occurrence pattern
- Probabilistic symptom co-occurrence pattern
- The table indicates that the two symptoms fear
of cold and cold limbs tend to co-occur in the
cluster Y29 s1 - Pattern meaningful from the TCM perspective.
- TCM asserts that YANG DEFICIENCY (??) can lead
to, among other symptoms, fear of cold and
cold limbs - So, the co-occurrence pattern suggests the TCM
symdrome type (??) YANG DEFICIENCY (??).
- The partition Y29 suggests that
- Among depressive patients, there is a subclass of
patient with YANG DEFICIENCY. - In this subclass, fear of cold and cold
limbs - co-occur with high probabilities (0.8 and
0.85)
28Probabilistic Symptom co-occurrence pattern
- Y28 s1 captures the probabilistic co-occurrence
of aching lumbus, lumbar pain like pressure
and lumbar pain like warmth. - This pattern is present in 27 of the patients.
- It suggests that
- Among depressive patients, there is a subclass
that correspond to the TCM concept of KINDNEY
DEPRIVED OF NOURISHMENT (????) - Characteristics of the subclass given by
distributions for Y28 s1
29Probabilistic Symptom co-occurrence pattern
- Y27 s1 captures the probabilistic co-occurrence
of weak lumbus and knees and cumbersome
limbs. - This pattern is present in 44 of the patients
- It suggests that,
- Among depressive patients, there is a subclass
that correspond to the TCM concept of KIDNEY
DEFICIENCY (??) - Characteristics of the subclass given by
distributions for Y27 s1 - Y27, Y28, Y29 together provide evidence for
defining KIDNEY YANG DEFICIENCY
30Probabilistic Symptom co-occurrence pattern
- Pattern Y23 s1 provides evidence for defining
LIVER QI STAGNATION ( ????) - Pattern Y22 s1 provides evidence for defining
LIVER QI STAGNATION -
31Probabilistic Symptom co-occurrence pattern
- Pattern Y21 s1 evidence for defining STAGNANT
QI TURNING INTO FIRE (????) - Y19 s1 evidence for defining QI STAGNATION IN
HEAD - Y17 s1 evidence for defining HEART QI
DEFICIENCY - Y16 s1 evidence for defining QI STAGNATION
- Y15 s1 evidence for defining QI DEFICIENCY
32Probabilistic Symptom co-occurrence pattern
- Y11 s1 evidence for defining DEFICIENCY OF
STOMACH/SPLEEN YIN (????) - Y10 s1 evidence for definingYIN DEFICIENCY (??)
- Y9 s1 evidence for defining DEFICIENCY OF BOTH
QI AND YIN (????)
33Symptom Mutual-Exclusion Patterns
- Some empirical partitions reveal symptom
exclusion patterns - Y1 reveals the mutual exclusion of white
tongue coating, yellow tongue coating and
yellow-white tongue coating - Y2 reveals the mutual exclusion of thin tongue
coating, thick tongue coating and little
tongue coating.
34Summary
- By analyzing 604 cases of depressive patient data
using latent tree models we have discovered a
host of probabilistic symptom co-occurrence
patterns and symptom mutual-exclusion patterns. - Most of the co-occurrence patterns have clear TCM
syndrome connotations, while the mutual-exclusion
patterns are also reasonable and meaningful. - The patterns can be used as evidence for the task
of defining TCM classes in the context of
depressive patients and for differentiating
between those classes.
35Outline
- Introduction
- Data Analysis Tool
- Case Study
- Another Perspective on the Results
- Conclusions
36Statistical Validation of TCM Postulates
37Value of Work in View of Others
- D. Haughton and J. Haughton. Living Standards
Analytics Development through the Lens of
Household Survey Data. Springer. 2012 - Zhang et al. provide a very interesting
application of latent class models to diagnoses
in traditional Chinese medicine (TCM). - The results tend to confirm known theories in
Chinese traditional medicine. - This is a significant advance, since the
scientific bases for these theories are not
known. - The model proposed by the authors provides at
least a statistical justification for them.
38Concluding Remarks
- Latent tree analysis is tool for
- Systematically identifying co-occurrence
patterns of symptoms - Introduce latent structure to explain the
patterns - Provide evidence in support of TCM postulates
about symptom occurrence - Tool for multidimensional clustering
- Each latent variable represents a partition of
data - Provide evidence for TCM patient class definition
and differentiation
39