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ANTICANCER THIAZOLIDINONES DESIGN:
Mining of 60-Cell Lines Experimental Data
Oleg Devinyak, Roman Lesyk
Uzhgorod National University
Danylo Halytsky Lviv National Medical Univeristy
2
BACKGROUND
NCI-60 DTP Human Tumor Cell Line Screen
non-active
Conc:
10-5
M
active
First Stage
Second Stage
Conc:
10-5
M
3
PROBLEMS
1. Have the same dose results of this two
stages enough statistical similarity to be
treated together in future QSAR
modelling?
2. Where is a rational border between
active and inactive compounds?
3. Is there different mechanisms of
antitumor action associated with
investigated compounds?
4
SAME DOSE RESULTS
ANALYSIS
HYPOTHESIS: Same dose results are
homogenous
Conclusion 1. This results can be combined
together to increase overall data amount.
Conclusion 2. Deviation in the results for same
compounds is an error of the experiment
Conclusion 3. This experimental error is a minimal
error for any QSAR model based on this data
5
Null hypothesis: deviations in the results
for same compounds is a normally
distributed random sample with zero
mean and unknown variance.
SAME DOSE RESULTS
ANALYSIS
60 cell lines
results for
73 pairs of
compounds
Student’s t-test
41 cell lines –
null hypothesis is rejected
19 cell lines –
fail to reject null hypothesis
6
SAME DOSE RESULTS
ANALYSIS
7
SAME DOSE RESULTS
ANALYSIS
8
RATIONAL BORDER BETWEEN
ACTIVITY AND INACTIVITY
9
A SEARCH FOR DIFFERENT
ANTITUMOR MECHANISMS
Principal component analysis
Principal Components PC1 PC2 PC3 PC4 PC5 PC6 PC7 PC8 PC9 PC10
Explained variance,
%
67,48 3,40 2,28 2,08 1,92 1,86 1,72 1,64 1,42 1,24
Decrease in explained
variance, %
64.08 1.19 0.20 0.17 0.05 0.14 0.08 0.22 0.19 0.07
10
A SEARCH FOR DIFFERENT
ANTITUMOR MECHANISMS
Self-organizing maps
11
A SEARCH FOR DIFFERENT
ANTITUMOR MECHANISMS
Self-organizing maps
∑ −−= )100( ii GIIA
,
12
SENSITIVITY PATTERNS
Most sensitive lines
NCI-H460 MDA-MB-231/ATCC
М14 SK-MEL-5
13
SENSITIVITY PATTERNS
Most insensitive lines
HOP-62 OVCAR-5
SK-OV-3 SNB-19
14
SUMMARY
• The homogeneity of NCI DTP results obtained
from different testing stages is rejected
• About 4% of testing results are extreme errors
• Rational border between active and non-
active compunds is introduced
• Two independent and one mixed mechanisms
of 4-thiazolidinones antitumor activity are
identified
• Some selectivity linked with different modes of
action for separate cell lines is highlighted
15
THANK YOU FOR
ATTENTION!

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ANTICANCER THIAZOLIDINONES DESIGN: Mining of 60-Cell Lines Experimental Data

  • 1. ANTICANCER THIAZOLIDINONES DESIGN: Mining of 60-Cell Lines Experimental Data Oleg Devinyak, Roman Lesyk Uzhgorod National University Danylo Halytsky Lviv National Medical Univeristy
  • 2. 2 BACKGROUND NCI-60 DTP Human Tumor Cell Line Screen non-active Conc: 10-5 M active First Stage Second Stage Conc: 10-5 M
  • 3. 3 PROBLEMS 1. Have the same dose results of this two stages enough statistical similarity to be treated together in future QSAR modelling? 2. Where is a rational border between active and inactive compounds? 3. Is there different mechanisms of antitumor action associated with investigated compounds?
  • 4. 4 SAME DOSE RESULTS ANALYSIS HYPOTHESIS: Same dose results are homogenous Conclusion 1. This results can be combined together to increase overall data amount. Conclusion 2. Deviation in the results for same compounds is an error of the experiment Conclusion 3. This experimental error is a minimal error for any QSAR model based on this data
  • 5. 5 Null hypothesis: deviations in the results for same compounds is a normally distributed random sample with zero mean and unknown variance. SAME DOSE RESULTS ANALYSIS 60 cell lines results for 73 pairs of compounds Student’s t-test 41 cell lines – null hypothesis is rejected 19 cell lines – fail to reject null hypothesis
  • 9. 9 A SEARCH FOR DIFFERENT ANTITUMOR MECHANISMS Principal component analysis Principal Components PC1 PC2 PC3 PC4 PC5 PC6 PC7 PC8 PC9 PC10 Explained variance, % 67,48 3,40 2,28 2,08 1,92 1,86 1,72 1,64 1,42 1,24 Decrease in explained variance, % 64.08 1.19 0.20 0.17 0.05 0.14 0.08 0.22 0.19 0.07
  • 10. 10 A SEARCH FOR DIFFERENT ANTITUMOR MECHANISMS Self-organizing maps
  • 11. 11 A SEARCH FOR DIFFERENT ANTITUMOR MECHANISMS Self-organizing maps ∑ −−= )100( ii GIIA ,
  • 12. 12 SENSITIVITY PATTERNS Most sensitive lines NCI-H460 MDA-MB-231/ATCC М14 SK-MEL-5
  • 13. 13 SENSITIVITY PATTERNS Most insensitive lines HOP-62 OVCAR-5 SK-OV-3 SNB-19
  • 14. 14 SUMMARY • The homogeneity of NCI DTP results obtained from different testing stages is rejected • About 4% of testing results are extreme errors • Rational border between active and non- active compunds is introduced • Two independent and one mixed mechanisms of 4-thiazolidinones antitumor activity are identified • Some selectivity linked with different modes of action for separate cell lines is highlighted