ResectVol: A tool to automatically segment and characterize lacunas in brain images.
Raphael Fernandes CassebBrunno Machado de CamposMárcia E MoritaAmr MorsiEfstathios KondylisWilliam E BingamanStephen E JonesLara E JehiFernando CendesPublished in: Epilepsia open (2021)
Epilepsy surgery is the treatment of choice for pharmacoresistant focal epilepsies, and despite the extensive literature on the subject, we still cannot predict surgical outcomes accurately. As the volume and location of the resected tissue are fundamentally relevant to this prediction, researchers commonly perform a manual segmentation of the lacuna, which presents human bias and does not provide detailed information about the structures removed. In this study, we introduce ResectVol, a user-friendly, fully automatic tool to accomplish these tasks. This capability enables more advanced analytical techniques applied to surgical outcomes prediction, such as machine-learning algorithms, by facilitating coregistration of the resected area and preoperative findings with other imaging modalities such as PET, SPECT, and functional MRI ResectVol is freely available at https://www.lniunicamp.com/resectvol.
Keyphrases
- deep learning
- machine learning
- convolutional neural network
- artificial intelligence
- high resolution
- lymph node
- endothelial cells
- minimally invasive
- magnetic resonance imaging
- pet ct
- systematic review
- big data
- computed tomography
- white matter
- prognostic factors
- contrast enhanced
- optical coherence tomography
- induced pluripotent stem cells
- working memory
- resting state
- coronary artery disease
- functional connectivity
- magnetic resonance
- health information
- diffusion weighted imaging
- decision making
- pluripotent stem cells