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Comparing correlated correlations Advisor: Rhonda Decook Client: Vinayak Consultants: Tianyu Li, Qinbin Fan Department of Statistics and Actuarial Science.

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Presentation on theme: "Comparing correlated correlations Advisor: Rhonda Decook Client: Vinayak Consultants: Tianyu Li, Qinbin Fan Department of Statistics and Actuarial Science."— Presentation transcript:

1 Comparing correlated correlations Advisor: Rhonda Decook Client: Vinayak Consultants: Tianyu Li, Qinbin Fan Department of Statistics and Actuarial Science University of Iowa

2 LOGO Outline  Introduction  Data Highlights  Results & Analysis  Conclusion

3 LOGO Introduction  Gold Standard: first take the average score of each image from 3 graders and then re-rank them. ( we also tried other ways to define the gold standard, but this definition is the one we mainly use)  Let r alg.i,GS represent the pearson correlation coefficient between algorithm i and the gold standard (GS).  The r alg.i,GS values for the data set with 12 algorithms and 25 images are shown below (from largest correlation to smallest):

4 LOGO Introduction Correlation with AlgorithmGS 12*0.6583 100.6259 30.5806 90.5718 40.5385 80.5040 60.5000 50.4630 70.4601 10.4300 110.3104 20.2422

5 LOGO Introduction

6 LOGO  We use the bootstrap to form the confidence interval on the difference between the transformed version of r.  The bootstrap method takes into account the fact that the algorithms were all applied to the same set of 25 images.  The bootstrap method resamples with replacement from the original set of n=25 images, to create a ‘new hypothetical’ data set. We calculate the difference in correlations in each of 5000 bootstrapped data sets to provide us with sampling distribution for the difference Introduction

7 LOGO Introduction

8 LOGO Data Highlights Patient ID12… A1.161542.114705… B1.2031862.126865… ………… 123GS 16211316 20132320 …………

9 LOGO Results & Analysis r12-rj (raw) z12-zj (fisher) CI of Diff (99.5%) CI of Diff (95%) Significan t Diff A2 VS A12 0.4160.542( 0.042, 1.338 )( 0.169, 1.048 )YES A11 VS A12 0.3470.468(-0.109, 1.266 )( 0.087, 0.975 )NO/YES A1 VS A12 0.2280.329(-0.253, 0.977 )(-0.058, 0.761 )NO A7 VS A12 0.1980.292(-0.229, 0.870 )(-0.046, 0.664 )NO A5 VS A12 0.1950.288(-0.255, 0.845 )(-0.066, 0.670 )NO A6 VS A12 0.1580.240(-0.466, 0.835 )(-0.208, 0.620 )NO

10 LOGO Results & Analysis A8 VS A12 0.1540.235(-0.310, 0.753 ) (-0.113, 0.596 ) NO A4 VS A12 0.1190.187(-0.431, 0.768 )(-0.211, 0.584 )NO A9 VS A12 0.0860.139(-0.461, 0.689 )(-0.256, 0.504 )NO A3 VS A12 0.0770.126(-0.422, 0.652 )(-0.222, 0.464 )NO A10 VS A12 0.0320.055(-0.411, 0.576 )(-0.255, 0.392 )NO

11 LOGO Results & Analysis  A2(worst) VS A12

12 LOGO Results & Analysis A11(2 nd worst) VS A12

13 LOGO Results & Analysis  We also tried other ways to define the gold standard, for example, we tried to use only the 2 most strongly correlated columns and do the same, to use the median rank of all 3 for each image, and do the same, and to use averages without re-ranking. We found pretty similar results from all four cases. To save space and time, we do not present results of the other three.

14 LOGO Conclusion  We did not find statistically significant difference between our client’s method and all the other methods.  Results may vary when we have more data. ( more image grades)


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