Automated fusion of multimodal imaging data for identifying epileptogenic lesions in patients with inconclusive magnetic resonance imaging.
Radek MarecekPavel ŘíhaMichaela BartoňováMartin KojanMartin LamošMartin GajdošLubomír VojtíšekMichal MiklMarek BartoňIrena DoležalováMartin PailOndřej StrýčekMarta PažourkováMilan BrázdilIvan RektorPublished in: Human brain mapping (2021)
Many methods applied to data acquired by various imaging modalities have been evaluated for their benefit in localizing lesions in magnetic resonance (MR) negative epilepsy patients. No approach has proven to be a stand-alone method with sufficiently high sensitivity and specificity. The presented study addresses the potential benefit of the automated fusion of results of individual methods in presurgical evaluation. We collected electrophysiological, MR, and nuclear imaging data from 137 patients with pharmacoresistant MR-negative/inconclusive focal epilepsy. A subgroup of 32 patients underwent surgical treatment with known postsurgical outcomes and histopathology. We employed a Gaussian mixture model to reveal several classes of gray matter tissue. Classes specific to epileptogenic tissue were identified and validated using the surgery subgroup divided into two disjoint sets. We evaluated the classification accuracy of the proposed method at a voxel-wise level and assessed the effect of individual methods. The training of the classifier resulted in six classes of gray matter tissue. We found a subset of two classes specific to tissue located in resected areas. The average classification accuracy (i.e., the probability of correct classification) was significantly higher than the level of chance in the training group (0.73) and even better in the validation surgery subgroup (0.82). Nuclear imaging, diffusion-weighted imaging, and source localization of interictal epileptic discharges were the strongest methods for classification accuracy. We showed that the automatic fusion of results can identify brain areas that show epileptogenic gray matter tissue features. The method might enhance the presurgical evaluations of MR-negative epilepsy patients.
Keyphrases
- end stage renal disease
- magnetic resonance
- deep learning
- machine learning
- magnetic resonance imaging
- high resolution
- contrast enhanced
- newly diagnosed
- ejection fraction
- chronic kidney disease
- peritoneal dialysis
- minimally invasive
- prognostic factors
- computed tomography
- gene expression
- type diabetes
- clinical trial
- big data
- diffusion weighted imaging
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- metabolic syndrome
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- adipose tissue
- genome wide
- phase iii
- single cell
- photodynamic therapy
- virtual reality
- human health