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Liver Segmentation Using Active Learning. Ankur Bakshi Allison Petrosino Advisor: Dr. Jacob Furst August 21, 2008. Agenda. Introduction Problem Statement Related Work Liver Segmentation Methods Results Conclusion Questions. Agenda. Introduction Problem Statement Related Work
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Liver Segmentation Using Active Learning Ankur Bakshi Allison Petrosino Advisor: Dr. Jacob Furst August 21, 2008
Agenda • Introduction • Problem Statement • Related Work • Liver Segmentation • Methods • Results • Conclusion • Questions
Agenda • Introduction • Problem Statement • Related Work • Liver Segmentation • Methods • Results • Conclusion • Questions
Introduction • Liver has many important functions • Liver cancer is 4th most common malignancy in the world • Computed Tomography (CT) scans are a common tool for diagnosis
Agenda • Introduction • Problem Statement • Related Work • Liver Segmentation • Methods • Results • Conclusion • Questions
Problem Statement • Liver Segmentation is an important first step for Computer-Aided Diagnosis (CAD) • Difficulties associated with liver segmentation • Time consuming • Similarities to other organs Source: Comparison and Evaluation of Methods for Liver Segmentation from CT datasets, Heimann et al., 2008
Agenda • Introduction • Problem Statement • Related Work • Liver Segmentation • Methods • Results • Conclusion • Questions
Related Work • Heimann et al.- statistical shape based segmentation • Susomboon et al.- hybrid liver segmentation • Tur et al.- natural language application • Tong et al.- text classification • Turtinen et al.- texture application • Prasad et al.- emphysema classification
Agenda • Introduction • Problem Statement • Related Work • Liver Segmentation • Methods • Results • Conclusion • Questions
Agenda • Introduction • Problem Statement • Related Work • Liver Segmentation • Methods • Results • Conclusion • Questions
Methods Explored • Passive Learning • Active Learning • 1000 vs 100 initial examples • 100 vs 10 examples added • Negatives taken from evaluated non-liver vs. all non-liver • Most informative vs Hierarchical • Gabor
Agenda • Introduction • Problem Statement • Related Work • Liver Segmentation • Methods • Results • Conclusion • Questions
Results, Patient 1 Slice 134 Slice 135 Slice 136 Slice 137 Slice 138 Slice 139
Agenda • Introduction • Problem Statement • Related Work • Liver Segmentation • Methods • Results • Conclusion • Questions
Conclusion • Classifier based approach outperforms confidence interval based approach • Active learning outperforms passive learning • Different active learning methods have similar results • 10 examples, evaluated non-liver is most promising • Interesting structures highlighted for application in CADx systems
Agenda • Introduction • Problem Statement • Related Work • Liver Segmentation • Methods • Results • Conclusion • Questions