A Step Towards Deep Learning-based CADs for Cancer Analysis in Medical Imaging
Permanent lenke
https://hdl.handle.net/10037/19673Dato
2019-06-01Type
Master thesisMastergradsoppgave
Forfatter
Pedersen, AndréSammendrag
In 2018, cancer was the second leading cause of death worldwide. Early detection can reduce mortality. Screening programs intended for early detection increases the workload for clinicians. To improve efficiency CAD systems would be highly beneficial.
We have developed CAD systems using deep learning, for automatic tissue segmentation and prediction of diagnosis in lung and breast cancer. The first subproject focuses on automatic detection, 3D segmentation and malignancy prediction of lung nodules in CT, and the other aims to design an automatic method for breast tumor segmentation and histological grade prediction.
For lung nodule segmentation, we designed a new 3D-UNet architecture to handle larger input chunks than what is commonly used. Our best model achieved 0.915 recall, 2.9 FPR and 0.813 DSCTP on a subset of the LIDC data set. For malignancy prediction we designed a CNN architecture that achieved a weighted average f1-score of 0.960, only requiring a centroid initialization of the nodule.
We then designed an autoencoder for breast tumor segmentation, and achieved a DSC of 0.895 and 0.881 on two independent data sets. For histological grade prediction, we achieved a weighted average f1-score of 0.824. Using max voting we produced correct classification of 10/12 WSIs.
Forlag
UiT Norges arktiske universitetUiT The Arctic University of Norway
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