[EN] Bone metastases are a common complication in some high incidence types
of cancer, like prostate or breast cancer. The complications associated with
bone metastases include bone pain, fractures and spinal cord ...[+]
[EN] Bone metastases are a common complication in some high incidence types
of cancer, like prostate or breast cancer. The complications associated with
bone metastases include bone pain, fractures and spinal cord compression.
Most part of bone metastases are irreversible and treatments are focused on
slowing the growth of the lesions. In the United States, 17% of the total
direct medical cost was employed treating bone metastases. In order to improve the health of the patients and cut down medical costs, early detection
is crucial. Some studies have shown that Whole-Body MRI has the potential
to become the best method for diagnosis but there are still some difficulties
left. One patient can have multiple bone metastases all over the skeleton
in different sizes. This makes diagnosing bone metastases a tough task for
the radiologists and because of the irregular shapes of the bone metastases,
changes in size are also difficult to measure. The goal of this project is to
provide an automatic tool for the segmentation of bone metastasis, making
it easier for the clinicians to diagnose and to control the size of the present
metastases. Using different modalities of MRI (T1 and B1000) and different
patch sizes (16x16x16 and 32x32x32) a convolutional neural network (UNet) was trained. The segmentations predicted by each U-Net employing
one modality and size, were later combined into one final segmentation. The
best results achieved with this approach are the following: a correct detection of 37 bone metastases out a total of 100 with 67 false positives using
k fold cross-validation and a dataset of 6 different patients with multiple
acquisitions making a total of 100 lesions.
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[ES] En este trabajo se investiga la capacidad de las redes neuronales, en concreto redes neuronales convolucionales (CNN), como una herramienta para la segmentación automática de metástasis óseas locales en imágenes ...[+]
[ES] En este trabajo se investiga la capacidad de las redes neuronales, en concreto redes neuronales convolucionales (CNN), como una herramienta para la segmentación automática de metástasis óseas locales en imágenes multimodales de resonancia magnética.
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