151 results on '"Litt B"'
Search Results
2. What is a Low-Energy House?
- Author
-
Litt, B. and Meier, A.K.
- Published
- 1994
3. The Middle Tees and Its Tributaries: A Study in River Development
- Author
-
Fawcett, C. B. and Litt, B.
- Published
- 1916
- Full Text
- View/download PDF
4. Evolving a Bayesian classifier for ECG-based age classification in medical applications
- Author
-
Wiggins, M., Saad, A., Litt, B., and Vachtsevanos, G.
- Published
- 2008
- Full Text
- View/download PDF
5. Electrocorticography reveals spatiotemporal neuronal activation patterns of verbal fluency in patients with epilepsy
- Author
-
Roberson, S.W., Shah, P., Piai, V., Gatens, H., Krieger, A.M., Lucas, T.H., Litt, B., Roberson, S.W., Shah, P., Piai, V., Gatens, H., Krieger, A.M., Lucas, T.H., and Litt, B.
- Abstract
Contains fulltext : 216835pub.pdf (Publisher’s version ) (Closed access), Verbal fluency is commonly used to evaluate cognitive dysfunction in a variety of neuropsychiatric diseases, yet the neurobiology underlying performance of this task is incompletely understood. Electrocorticography (ECoG) provides a unique opportunity to investigate temporal activation patterns during cognitive tasks with high spatial and temporal precision. We used ECoG to study high gamma activity (HGA) patterns in patients undergoing presurgical evaluation for intractable epilepsy as they completed an overt, free-recall verbal fluency task. We examined regions demonstrating changes in HGA during specific timeframes relative to speech onset. Early pre-speech high gamma activity was present in left frontal regions during letter fluency and in bifrontal regions during category fluency. During timeframes typically associated with word planning, a distributed network was engaged including left inferior frontal, orbitofrontal and posterior temporal regions. Peri-Rolandic activation was observed during speech onset, and there was post-speech activation in the bilateral posterior superior temporal regions. Based on these observations in the context of prior studies, we propose a model of neocortical activity patterns underlying verbal fluency.
- Published
- 2020
6. Race and Sex Differences in the Distribution of Cerebral Atherosclerosis
- Author
-
Wityk, R. J., Lehman, D., Klag, M., Coresh, J., Ahn, H., and Litt, B.
- Published
- 1996
7. Crowdsourcing reproducible seizure forecasting in human and canine epilepsy
- Author
-
Brinkmann BH, Wagenaar J, Abbot D, Adkins P, Bosshard SC, Chen M, Tieng QM, He J, Muñoz-Almaraz FJ, Botella-Rocamora P, Pardo J, Zamora-Martinez F, Hills M, Wu W, Korshunova I, Cukierski W, Vite C, Patterson EE, Litt B, and Worrell GA
- Abstract
Seizures are thought to arise from an identifiable pre-ictal state. Brinkmann et al. report the results of an online, open-access seizure forecasting competition using intracranial EEG recordings from canines with naturally occurring epilepsy and human patients undergoing presurgical monitoring. The winning algorithms forecast seizures at rates significantly greater than chance.See Mormann and Andrzejak (doi:10.1093/brain/aww091) for a scientific commentary on this article. aEuro, Seizures are thought to arise from an identifiable pre-ictal state. Brinkmann et al. report the results of an online, open-access seizure forecasting competition using intracranial EEG recordings from canines with naturally occurring epilepsy and human patients undergoing presurgical monitoring. The winning algorithms forecast seizures at rates significantly greater than chance.Accurate forecasting of epileptic seizures has the potential to transform clinical epilepsy care. However, progress toward reliable seizure forecasting has been hampered by lack of open access to long duration recordings with an adequate number of seizures for investigators to rigorously compare algorithms and results. A seizure forecasting competition was conducted on kaggle.com using open access chronic ambulatory intracranial electroencephalography from five canines with naturally occurring epilepsy and two humans undergoing prolonged wide bandwidth intracranial electroencephalographic monitoring. Data were provided to participants as 10-min interictal and preictal clips, with approximately half of the 60 GB data bundle labelled (interictal/preictal) for algorithm training and half unlabelled for evaluation. The contestants developed custom algorithms and uploaded their classifications (interictal/preictal) for the unknown testing data, and a randomly selected 40% of data segments were scored and results broadcasted on a public leader board. The contest ran from August to November 2014, and 654 participants submitted 17 856 classifications of the unlabelled test data. The top performing entry scored 0.84 area under the classification curve. Following the contest, additional held-out unlabelled data clips were provided to the top 10 participants and they submitted classifications for the new unseen data. The resulting area under the classification curves were well above chance forecasting, but did show a mean 6.54 +/- 2.45% (min, max: 0.30, 20.2) decline in performance. The kaggle.com model using open access data and algorithms generated reproducible research that advanced seizure forecasting. The overall performance from multiple contestants on unseen data was better than a random predictor, and demonstrates the feasibility of seizure forecasting in canine and human epilepsy.
- Published
- 2016
8. Modeling EEG Waveforms with Semi-Supervised Deep Belief Nets: Fast Classification and Anomaly Measurement
- Author
-
Wulsin, D. F., Gupta, J. R., Mani, R., Blanco, J. A., and Litt, B.
- Subjects
Epilepsy ,Models, Neurological ,Brain ,Reproducibility of Results ,Electroencephalography ,Sensitivity and Specificity ,Article ,Pattern Recognition, Automated ,Artificial Intelligence ,Humans ,Computer Simulation ,Diagnosis, Computer-Assisted ,Nerve Net ,Algorithms - Abstract
Clinical electroencephalography (EEG) records vast amounts of human complex data yet is still reviewed primarily by human readers. Deep Belief Nets (DBNs) are a relatively new type of multi-layer neural network commonly tested on two-dimensional image data, but are rarely applied to times-series data such as EEG. We apply DBNs in a semi-supervised paradigm to model EEG waveforms for classification and anomaly detection. DBN performance was comparable to standard classifiers on our EEG dataset, and classification time was found to be 1.7 to 103.7 times faster than the other high-performing classifiers. We demonstrate how the unsupervised step of DBN learning produces an autoencoder that can naturally be used in anomaly measurement. We compare the use of raw, unprocessed data—a rarity in automated physiological waveform analysis—to hand-chosen features and find that raw data produces comparable classification and better anomaly measurement performance. These results indicate that DBNs and raw data inputs may be more effective for online automated EEG waveform recognition than other common techniques.
- Published
- 2011
9. Decoding the memorization of individual stimuli with direct human brain recordings
- Author
-
Gerven, M.A.J. van, Maris, E.G.G., Sperling, M., Sharan, A., Litt, B., Anderson, C., Baltuch, G., Jacobs, J., Gerven, M.A.J. van, Maris, E.G.G., Sperling, M., Sharan, A., Litt, B., Anderson, C., Baltuch, G., and Jacobs, J.
- Abstract
Contains fulltext : 115385.pdf (Publisher’s version ) (Closed access), Through decades of research, neuroscientists and clinicians have identified an array of brain areas that each activate when a person views a certain category of stimuli. However, we do not have a detailed understanding of how the brain represents individual stimuli within a category. Here we used direct human brain recordings and machine-learning algorithms to characterize the distributed patterns that distinguish specific cognitive states. Epilepsy patients with surgically implanted electrodes performed a working-memory task and we used machine-learning algorithms to predict the identity of each viewed stimulus. We found that the brain's representation of stimulus-specific information is distributed across neural activity at multiple frequencies, electrodes, and timepoints. Stimulus-specific neuronal activity was most prominent in the high-gamma (65-128 Hz) and theta/alpha (4-16 Hz) bands, but the properties of these signals differed significantly between individuals and for novel stimuli compared to common ones. Our findings are helpful for understanding the neural basis of memory and developing brain-computer interfaces by showing that the brain distinguishes specific cognitive states by diverse spatiotemporal patterns of neuronal.
- Published
- 2013
10. Category-Specific Neural Oscillations Predict Recall Organization During Memory Search
- Author
-
Morton, N. W., primary, Kahana, M. J., additional, Rosenberg, E. A., additional, Baltuch, G. H., additional, Litt, B., additional, Sharan, A. D., additional, Sperling, M. R., additional, and Polyn, S. M., additional
- Published
- 2012
- Full Text
- View/download PDF
11. Data mining neocortical high-frequency oscillations in epilepsy and controls
- Author
-
Blanco, J. A., primary, Stead, M., additional, Krieger, A., additional, Stacey, W., additional, Maus, D., additional, Marsh, E., additional, Viventi, J., additional, Lee, K. H., additional, Marsh, R., additional, Litt, B., additional, and Worrell, G. A., additional
- Published
- 2011
- Full Text
- View/download PDF
12. Hippocampal Gamma Oscillations Increase with Memory Load
- Author
-
van Vugt, M. K., primary, Schulze-Bonhage, A., additional, Litt, B., additional, Brandt, A., additional, and Kahana, M. J., additional
- Published
- 2010
- Full Text
- View/download PDF
13. Time-frequency spectral estimation of multichannel EEG using the auto-SLEX method
- Author
-
UCL - EUEN/STAT - Institut de statistique, Cranstoun, SD, Ombao, HC, von Sachs, Rainer, Guo, WS, Litt, B, UCL - EUEN/STAT - Institut de statistique, Cranstoun, SD, Ombao, HC, von Sachs, Rainer, Guo, WS, and Litt, B
- Abstract
In this paper, we apply a new time-frequency spectral estimation method for multichannel data to epileptiform electroencephalography (EEG). The method is based on the smooth localized complex exponentials (SLEX) functions which are time-frequency localized versions of the Fourier functions and, hence, are ideal for analyzing nonstationary signals whose spectral properties evolve over time. The SLEX functions are simultaneously orthogonal and localized in time and frequency because they are obtained by applying a projection operator rather than a window or taper. In this paper, we present the Auto-SLEX method which is a statistical method that 1) computes the periodogram using the SLEX transform, 2) automatically segments the signal into approximately stationary segments using an objective criterion that is based on log energy, and 3) automatically selects the optimal bandwidth of the spectral smoothing window. The method is applied to the intracranial EEG from a patient with temporal lobe epilepsy. This analysis reveals a reduction in average duration of stationarity in preseizure epochs of data compared to baseline. These changes begin up to hours prior to electrical seizure onset in this patient.
- Published
- 2002
14. Feature Parameter Optimization for Seizure Detection/Prediction
- Author
-
GEORGIA INST OF TECH ATLANTA, Esteller, R., Echauz, J., Alessandro, M. D., Vachtsevanos, G., Litt, B., GEORGIA INST OF TECH ATLANTA, Esteller, R., Echauz, J., Alessandro, M. D., Vachtsevanos, G., and Litt, B.
- Abstract
When dealing with seizure detection/prediction problems, there are three main performance metrics that must be optimized: false positive rate, false negative rate, detection delay or, if the problem is seizure prediction, it is desirable to obtain the greatest prediction time achievable. Tuning specific extracted features to individual patients can lead to improved results. The processing window length is also an important parameter whose optimization may significantly affect performance. In this study we propose an approach for selecting the window length for the particular detection/prediction problem. This approach is applicable to other feature parameters suitable for tuning or optimization., Papers from 23rd Annual International Conference of the IEEE Engineering in Medicine and Biology Society, October 25-28, 2001, held in Istanbul, Turkey. See also ADM001351 for entire conference cd-rom. The original document contains color images.
- Published
- 2001
15. Line Length: An Efficient Feature for Seizure Onset Detection
- Author
-
NEURO PACE INC LOS ANGELES CA, Esteller, R., Echauz, J., Tcheng, T., Litt, B., Pless, B., NEURO PACE INC LOS ANGELES CA, Esteller, R., Echauz, J., Tcheng, T., Litt, B., and Pless, B.
- Abstract
A signal feature with low computational burden is presented as an efficient tool for seizure onset detection. The feature was evaluated over a total of 1,215 hours of intracranial EEG signal from 10 patients. Results confirmed this feature as being useful for seizure onset detection yielding an average delay of 4.1 seconds, 0.051 false positives per hour, and one false negative on a subclinical seizure out of 111 seizures analyzed of which 23 were subclinical., Papers from 23rd Annual International Conference of the IEEE Engineering in Medicine and Biology Society, October 25-28, 2001, held in Istanbul, Turkey. See also ADM001351 for entire conference cd-rom. The original document contains color images.
- Published
- 2001
16. Methanol production FPSO plant concept using multiple microchannel unit operations
- Author
-
TONKOVICH, A, primary, JAROSCH, K, additional, ARORA, R, additional, SILVA, L, additional, PERRY, S, additional, MCDANIEL, J, additional, DALY, F, additional, and LITT, B, additional
- Published
- 2008
- Full Text
- View/download PDF
17. High-frequency oscillations and seizure generation in neocortical epilepsy
- Author
-
Worrell, G. A., primary, Parish, L., additional, Cranstoun, S. D., additional, Jonas, R., additional, Baltuch, G., additional, and Litt, B., additional
- Published
- 2004
- Full Text
- View/download PDF
18. Epileptic seizure prediction using hybrid feature selection over multiple intracranial eeg electrode contacts: a report of four patients
- Author
-
D'Alessandro, M., primary, Esteller, R., additional, Vachtsevanos, G., additional, Hinson, A., additional, Echauz, J., additional, and Litt, B., additional
- Published
- 2003
- Full Text
- View/download PDF
19. Special issue on epileptic seizure prediction
- Author
-
Witte, H., primary, Iasemidis, L.D., additional, and Litt, B., additional
- Published
- 2003
- Full Text
- View/download PDF
20. Detection of seizure precursors from depth-EEG using a sign periodogram transform
- Author
-
Niederhauser, J.J., primary, Esteller, R., additional, Echauz, J., additional, Vachtsevanos, G., additional, and Litt, B., additional
- Published
- 2003
- Full Text
- View/download PDF
21. A comparison of waveform fractal dimension algorithms
- Author
-
Esteller, R., primary, Vachtsevanos, G., additional, Echauz, J., additional, and Litt, B., additional
- Published
- 2001
- Full Text
- View/download PDF
22. Temporal lobe epilepsy after experimental prolonged febrile seizures: prospective analysis.
- Author
-
Dubé C, Richichi C, Bender RA, Chung G, Litt B, Baram TZ, Dubé, Céline, Richichi, Cristina, Bender, Roland A, Chung, Grace, Litt, Brian, and Baram, Tallie Z
- Published
- 2006
- Full Text
- View/download PDF
23. A Comparison of Asanguineous Fluids and Whole Blood in the Treatment of Hemorrhagic Shock.
- Author
-
NAVAL MEDICAL RESEARCH INST BETHESDA MD, Moss,Gerald S., Proctor,H. J., Homer,Louis D., Herman,Clifford M., Litt,B. D., NAVAL MEDICAL RESEARCH INST BETHESDA MD, Moss,Gerald S., Proctor,H. J., Homer,Louis D., Herman,Clifford M., and Litt,B. D.
- Abstract
The object of this comparative study was to evaluate the circulatory and Metabolic responses of baboons in a state of oligemic shock to treatment with 5% albumin in saline solution followed by shed red blood cells, or isotonic saline solution followed by shed red blood cells, or whole blood alone. Without treatment, the mortality for the baboons was 100%. With treatment, the survival rates between the groups were not significantly different. The saline solution treatment group required 4.1 times the volume of shed blood, while the other groups required approximately 1.4 times the volume of shed blood. While there were some initial differences, by the end of the final resuscitation period, no significant differences were noted in cardiac output, pulmonary and peripheral vascular resistances, serum lactate, arteriovenous pO2 gradient difference, or arterial pressure.
- Published
- 1974
24. BODY ARMOR IN A HOT HUMID ENVIRONMENT. PART 2. STUDIES IN HEAT ACCLIMATIZED MEN
- Author
-
NAVAL MEDICAL FIELD RESEARCH LAB CAMP LEJEUNE NC, Yarger, William E., Litt, B. D., Goldman, Ralph F., NAVAL MEDICAL FIELD RESEARCH LAB CAMP LEJEUNE NC, Yarger, William E., Litt, B. D., and Goldman, Ralph F.
- Abstract
The standard issue Marine Corps personnel body armor vest (M1955) was tested for its effect on men working under hot humid conditions approximating those seen in Southeast Asia. This vest is largely impervious to the passage of water vapor and thereby impedes evaporative cooling over the chest. Body armor produces a pronounced effect reflected by an increase in rectal temperature in the subjects when they are wearing the armor. This effect is restricted to a range of environment bracketed by 82 to 88F WBGT (approximately). Below this level, heat loss from areas other than the chest is sufficient to dissipate body heat effectively. Above this range, the stress of the environment is so great and the evaporation of sweat is so inefficient that wearing body armor makes little difference. The effect of wearing armor in this range (82-88F) is equivalent to a 5F increase in the WBGT for unarmored men. The experiment was designed to eliminate the weight of the armor as a source of difference., See also Part 1, AD676689.
- Published
- 1969
25. Changes in Lung Compliance in Experimental Hemorrhagic Shock and Resuscitation
- Author
-
Proctor, H. J., primary, Moss, G. S., additional, Homer, L. D., additional, and Litt, B. D., additional
- Published
- 1969
- Full Text
- View/download PDF
26. History of the New England Female Medical College (1848???1874).
- Author
-
Waite, Frederick C., primary and Litt, B., additional
- Published
- 1951
- Full Text
- View/download PDF
27. The Work of Breathing
- Author
-
Ballantine, T. V. N., primary, Proctor, H. J., additional, Broussard, N. D., additional, and Litt, B. D., additional
- Published
- 1970
- Full Text
- View/download PDF
28. What is a low-energy house and who cares?
- Author
-
Litt, B
- Published
- 1994
- Full Text
- View/download PDF
29. On-Demand Seizures Facilitate Rapid Screening of Therapeutics for Epilepsy.
- Author
-
Chen Y, Litt B, Vitale F, and Takano H
- Abstract
Animal models of epilepsy are critical in drug development and therapeutic testing, but dominant methods for pharmaceutical evaluation face a tradeoff between higher throughput and etiological relevance. For example, in temporal lobe epilepsy, a type of epilepsy where seizures originate from limbic structures like the hippocampus, the main screening models are either based on acutely induced seizures in wild type, naïve animals or spontaneous seizures in chronically epileptic animals. Both types have their disadvantages - the acute convulsant or kindling induced seizures do not account for the myriad neuropathological changes in the diseased, epileptic brains, and spontaneous behavioral seizures are sparse in the chronically epileptic models, making it time-intensive to sufficiently power experiments. In this study, we took a mechanistic approach to precipitate seizures "on demand" in chronically epileptic mice. We briefly synchronized principal cells in the CA1 region of the diseased hippocampus to reliably induce stereotyped on-demand behavioral seizures. These induced seizures resembled naturally occurring spontaneous seizures in the epileptic animals and could be stopped by commonly prescribed anti-seizure medications such as levetiracetam and diazepam. Furthermore, we showed that seizures induced in chronically epileptic animals differed from those in naïve animals, highlighting the importance of evaluating therapeutics in the diseased circuit. Taken together, we envision our model to advance the speed at which both pharmacological and closed loop interventions for temporal lobe epilepsy are evaluated., Competing Interests: Competing interests Authors declare that they have no competing interests.
- Published
- 2024
- Full Text
- View/download PDF
30. The sixth sense: how much does interictal intracranial EEG add to determining the focality of epileptic networks?
- Author
-
Gallagher RS, Sinha N, Pattnaik AR, Ojemann WKS, Lucas A, LaRocque JJ, Bernabei JM, Greenblatt AS, Sweeney EM, Cajigas I, Chen HI, Davis KA, Conrad EC, and Litt B
- Abstract
Intracranial EEG is used for two main purposes: to determine (i) if epileptic networks are amenable to focal treatment and (ii) where to intervene. Currently, these questions are answered qualitatively and differently across centres. There is a need to quantify the focality of epileptic networks systematically, which may guide surgical decision-making, enable large-scale data analysis and facilitate multi-centre prospective clinical trials. We analysed interictal data from 101 patients with drug-resistant epilepsy who underwent pre-surgical evaluation with intracranial EEG at a single centre. We chose interictal data because of its potential to reduce the morbidity and cost associated with ictal recording. Sixty-five patients had unifocal seizure onset on intracranial EEG, and 36 were non-focal or multi-focal. We quantified the spatial dispersion of implanted electrodes and interictal intracranial EEG abnormalities for each patient. We compared these measures against the '5 Sense Score,' a pre-implant prediction of the likelihood of focal seizure onset, assessed the ability to predict unifocal seizure onset by combining these metrics and evaluated how predicted focality relates to subsequent treatment and outcomes. The spatial dispersion of intracranial EEG electrodes predicted network focality with similar performance to the 5-SENSE score [area under the receiver operating characteristic curve = 0.68 (95% confidence interval 0.57, 0.78)], indicating that electrode placement accurately reflected pre-implant information. A cross-validated model combining the 5-SENSE score and the spatial dispersion of interictal intracranial EEG abnormalities significantly improved this prediction [area under the receiver operating characteristic curve = 0.79 (95% confidence interval 0.70, 0.88); P < 0.05]. Predictions from this combined model differed between surgical- from device-treated patients with an area under the receiver operating characteristic curve of 0.81 (95% confidence interval 0.68, 0.85) and between patients with good and poor post-surgical outcome at 2 years with an area under the receiver operating characteristic curve of 0.70 (95% confidence interval 0.56, 0.85). Spatial measures of interictal intracranial EEG abnormality significantly improved upon pre-implant predictions of network focality by area under the receiver operating characteristic curve and increased sensitivity in a single-centre study. Quantified focality predictions related to ultimate treatment strategy and surgical outcomes. While the 5-SENSE score weighed for specificity in their multi-centre validation to prevent unnecessary implantation, sensitivity improvement found in our single-centre study by including intracranial EEG may aid the decision on whom to perform the focal intervention. We present this study as an important step in building standardized, quantitative tools to guide epilepsy surgery., Competing Interests: All authors declare no competing interest. E.C.C. consults for Epiminder, an EEG device company., (© The Author(s) 2024. Published by Oxford University Press on behalf of the Guarantors of Brain.)
- Published
- 2024
- Full Text
- View/download PDF
31. Interictal intracranial EEG asymmetry lateralizes temporal lobe epilepsy.
- Author
-
Conrad EC, Lucas A, Ojemann WKS, Aguila CA, Mojena M, LaRocque JJ, Pattnaik AR, Gallagher R, Greenblatt A, Tranquille A, Parashos A, Gleichgerrcht E, Bonilha L, Litt B, Sinha SR, Ungar L, and Davis KA
- Abstract
Patients with drug-resistant temporal lobe epilepsy often undergo intracranial EEG recording to capture multiple seizures in order to lateralize the seizure onset zone. This process is associated with morbidity and often ends in postoperative seizure recurrence. Abundant interictal (between-seizure) data are captured during this process, but these data currently play a small role in surgical planning. Our objective was to predict the laterality of the seizure onset zone using interictal intracranial EEG data in patients with temporal lobe epilepsy. We performed a retrospective cohort study (single-centre study for model development; two-centre study for model validation). We studied patients with temporal lobe epilepsy undergoing intracranial EEG at the University of Pennsylvania (internal cohort) and the Medical University of South Carolina (external cohort) between 2015 and 2022. We developed a logistic regression model to predict seizure onset zone laterality using several interictal EEG features derived from recent publications. We compared the concordance between the model-predicted seizure onset zone laterality and the side of surgery between patients with good and poor surgical outcomes. Forty-seven patients (30 female; ages 20-69; 20 left-sided, 10 right-sided and 17 bilateral seizure onsets) were analysed for model development and internal validation. Nineteen patients (10 female; ages 23-73; 5 left-sided, 10 right-sided, 4 bilateral) were analysed for external validation. The internal cohort cross-validated area under the curve for a model trained using spike rates was 0.83 for a model predicting left-sided seizure onset and 0.68 for a model predicting right-sided seizure onset. Balanced accuracies in the external cohort were 79.3% and 78.9% for the left- and right-sided predictions, respectively. The predicted concordance between the laterality of the seizure onset zone and the side of surgery was higher in patients with good surgical outcome. We replicated the finding that right temporal lobe epilepsy was harder to distinguish in a separate modality of resting-state functional MRI. In conclusion, interictal EEG signatures are distinct across seizure onset zone lateralities. Left-sided seizure onsets are easier to distinguish than right-sided onsets. A model trained on spike rates accurately identifies patients with left-sided seizure onset zones and predicts surgical outcome. A potential clinical application of these findings could be to either support or oppose a hypothesis of unilateral temporal lobe epilepsy when deciding to pursue surgical resection or ablation as opposed to device implantation., Competing Interests: The authors report no competing interests., (© The Author(s) 2024. Published by Oxford University Press on behalf of the Guarantors of Brain.)
- Published
- 2024
- Full Text
- View/download PDF
32. Utility of intracranial EEG networks depends on re-referencing and connectivity choice.
- Author
-
Shi H, Pattnaik AR, Aguila C, Lucas A, Sinha N, Prager B, Mojena M, Gallagher R, Parashos A, Bonilha L, Gleichgerrcht E, Davis KA, Litt B, and Conrad EC
- Abstract
Studies of intracranial EEG networks have been used to reveal seizure generators in patients with drug-resistant epilepsy. Intracranial EEG is implanted to capture the epileptic network, the collection of brain tissue that forms a substrate for seizures to start and spread. Interictal intracranial EEG measures brain activity at baseline, and networks computed during this state can reveal aberrant brain tissue without requiring seizure recordings. Intracranial EEG network analyses require choosing a reference and applying statistical measures of functional connectivity. Approaches to these technical choices vary widely across studies, and the impact of these technical choices on downstream analyses is poorly understood. Our objective was to examine the effects of different re-referencing and connectivity approaches on connectivity results and on the ability to lateralize the seizure onset zone in patients with drug-resistant epilepsy. We applied 48 pre-processing pipelines to a cohort of 125 patients with drug-resistant epilepsy recorded with interictal intracranial EEG across two epilepsy centres to generate intracranial EEG functional connectivity networks. Twenty-four functional connectivity measures across time and frequency domains were applied in combination with common average re-referencing or bipolar re-referencing. We applied an unsupervised clustering algorithm to identify groups of pre-processing pipelines. We subjected each pre-processing approach to three quality tests: (i) the introduction of spurious correlations; (ii) robustness to incomplete spatial sampling; and (iii) the ability to lateralize the clinician-defined seizure onset zone. Three groups of similar pre-processing pipelines emerged: common average re-referencing pipelines, bipolar re-referencing pipelines and relative entropy-based connectivity pipelines. Relative entropy and common average re-referencing networks were more robust to incomplete electrode sampling than bipolar re-referencing and other connectivity methods (Friedman test, Dunn-Šidák test P < 0.0001). Bipolar re-referencing reduced spurious correlations at non-adjacent channels better than common average re-referencing (Δ mean from machine ref = -0.36 versus -0.22) and worse in adjacent channels (Δ mean from machine ref = -0.14 versus -0.40). Relative entropy-based network measures lateralized the seizure onset hemisphere better than other measures in patients with temporal lobe epilepsy (Benjamini-Hochberg-corrected P < 0.05, Cohen's d : 0.60-0.76). Finally, we present an interface where users can rapidly evaluate intracranial EEG pre-processing choices to select the optimal pre-processing methods tailored to specific research questions. The choice of pre-processing methods affects downstream network analyses. Choosing a single method among highly correlated approaches can reduce redundancy in processing. Relative entropy outperforms other connectivity methods in multiple quality tests. We present a method and interface for researchers to optimize their pre-processing methods for deriving intracranial EEG brain networks., Competing Interests: E.C.C. performs consulting work for Epiminder, an EEG device company. The remaining authors have no conflicts of interest., (© The Author(s) 2024. Published by Oxford University Press on behalf of the Guarantors of Brain.)
- Published
- 2024
- Full Text
- View/download PDF
33. iEEG-recon: A fast and scalable pipeline for accurate reconstruction of intracranial electrodes and implantable devices.
- Author
-
Lucas A, Scheid BH, Pattnaik AR, Gallagher R, Mojena M, Tranquille A, Prager B, Gleichgerrcht E, Gong R, Litt B, Davis KA, Das S, Stein JM, and Sinha N
- Subjects
- Humans, Retrospective Studies, Prospective Studies, Magnetic Resonance Imaging methods, Electrodes, Electroencephalography methods, Electrodes, Implanted, Electrocorticography methods, Epilepsy diagnostic imaging, Epilepsy surgery
- Abstract
Objective: Clinicians use intracranial electroencephalography (iEEG) in conjunction with noninvasive brain imaging to identify epileptic networks and target therapy for drug-resistant epilepsy cases. Our goal was to promote ongoing and future collaboration by automating the process of "electrode reconstruction," which involves the labeling, registration, and assignment of iEEG electrode coordinates on neuroimaging. We developed a standalone, modular pipeline that performs electrode reconstruction. We demonstrate our tool's compatibility with clinical and research workflows and its scalability on cloud platforms., Methods: We created iEEG-recon, a scalable electrode reconstruction pipeline for semiautomatic iEEG annotation, rapid image registration, and electrode assignment on brain magnetic resonance imaging (MRI). Its modular architecture includes a clinical module for electrode labeling and localization, and a research module for automated data processing and electrode contact assignment. To ensure accessibility for users with limited programming and imaging expertise, we packaged iEEG-recon in a containerized format that allows integration into clinical workflows. We propose a cloud-based implementation of iEEG-recon and test our pipeline on data from 132 patients at two epilepsy centers using retrospective and prospective cohorts., Results: We used iEEG-recon to accurately reconstruct electrodes in both electrocorticography and stereoelectroencephalography cases with a 30-min running time per case (including semiautomatic electrode labeling and reconstruction). iEEG-recon generates quality assurance reports and visualizations to support epilepsy surgery discussions. Reconstruction outputs from the clinical module were radiologically validated through pre- and postimplant T1-MRI visual inspections. We also found that our use of ANTsPyNet deep learning-based brain segmentation for electrode classification was consistent with the widely used FreeSurfer segmentations., Significance: iEEG-recon is a robust pipeline for automating reconstruction of iEEG electrodes and implantable devices on brain MRI, promoting fast data analysis and integration into clinical workflows. iEEG-recon's accuracy, speed, and compatibility with cloud platforms make it a useful resource for epilepsy centers worldwide., (© 2023 International League Against Epilepsy.)
- Published
- 2024
- Full Text
- View/download PDF
34. Artificial intelligence in epilepsy phenotyping.
- Author
-
Knight A, Gschwind T, Galer P, Worrell GA, Litt B, Soltesz I, and Beniczky S
- Abstract
Artificial intelligence (AI) allows data analysis and integration at an unprecedented granularity and scale. Here we review the technological advances, challenges, and future perspectives of using AI for electro-clinical phenotyping of animal models and patients with epilepsy. In translational research, AI models accurately identify behavioral states in animal models of epilepsy, allowing identification of correlations between neural activity and interictal and ictal behavior. Clinical applications of AI-based automated and semi-automated analysis of audio and video recordings of people with epilepsy, allow significant data reduction and reliable detection and classification of major motor seizures. AI models can accurately identify electrographic biomarkers of epilepsy, such as spikes, high-frequency oscillations, and seizure patterns. Integrating AI analysis of electroencephalographic, clinical, and behavioral data will contribute to optimizing therapy for patients with epilepsy., (© 2023 International League Against Epilepsy.)
- Published
- 2023
- Full Text
- View/download PDF
35. Resting-state background features demonstrate multidien cycles in long-term EEG device recordings.
- Author
-
Ojemann WKS, Scheid BH, Mouchtaris S, Lucas A, LaRocque JJ, Aguila C, Ashourvan A, Caciagli L, Davis KA, Conrad EC, and Litt B
- Subjects
- Humans, Seizures therapy, Brain, Electroencephalography methods, Epilepsy therapy
- Abstract
Background: Longitudinal EEG recorded by implanted devices is critical for understanding and managing epilepsy. Recent research reports patient-specific, multi-day cycles in device-detected epileptiform events that coincide with increased likelihood of clinical seizures. Understanding these cycles could elucidate mechanisms generating seizures and advance drug and neurostimulation therapies., Objective/hypothesis: We hypothesize that seizure-correlated cycles are present in background neural activity, independent of interictal epileptiform spikes, and that neurostimulation may temporarily interrupt these cycles., Methods: We analyzed regularly-recorded seizure-free data epochs from 20 patients implanted with a responsive neurostimulation (RNS) device for at least 1.5 years, to explore the relationship between cycles in device-detected interictal epileptiform activity (dIEA), clinician-validated interictal spikes, background EEG features, and neurostimulation., Results: Background EEG features tracked the cycle phase of dIEA in all patients (AUC: 0.63 [0.56-0.67]) with a greater effect size compared to clinically annotated spike rate alone (AUC: 0.55 [0.53-0.61], p < 0.01). After accounting for circadian variation and spike rate, we observed significant population trends in elevated theta and beta band power and theta and alpha connectivity features at the cycle peaks (sign test, p < 0.05). In the period directly after stimulation we observe a decreased association between cycle phase and EEG features compared to background recordings (AUC: 0.58 [0.55-0.64])., Conclusions: Our findings suggest that seizure-correlated dIEA cycles are not solely due to epileptiform discharges but are associated with background measures of brain state; and that neurostimulation may temporarily interrupt these cycles. These results may help elucidate mechanisms underlying seizure generation, provide new biomarkers for seizure risk, and facilitate monitoring, treating, and managing epilepsy with implantable devices., Competing Interests: Declaration of competing interest The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: E.C. is a paid consultant for Epiminder, an EEG device company, but declares no targeted compensation for this work. None of the other authors had any conflict of interest to disclose., (Copyright © 2023 The Authors. Published by Elsevier Inc. All rights reserved.)
- Published
- 2023
- Full Text
- View/download PDF
36. Generalization of finetuned transformer language models to new clinical contexts.
- Author
-
Xie K, Terman SW, Gallagher RS, Hill CE, Davis KA, Litt B, Roth D, and Ellis CA
- Abstract
Objective: We have previously developed a natural language processing pipeline using clinical notes written by epilepsy specialists to extract seizure freedom, seizure frequency text, and date of last seizure text for patients with epilepsy. It is important to understand how our methods generalize to new care contexts., Materials and Methods: We evaluated our pipeline on unseen notes from nonepilepsy-specialist neurologists and non-neurologists without any additional algorithm training. We tested the pipeline out-of-institution using epilepsy specialist notes from an outside medical center with only minor preprocessing adaptations. We examined reasons for discrepancies in performance in new contexts by measuring physical and semantic similarities between documents., Results: Our ability to classify patient seizure freedom decreased by at least 0.12 agreement when moving from epilepsy specialists to nonspecialists or other institutions. On notes from our institution, textual overlap between the extracted outcomes and the gold standard annotations attained from manual chart review decreased by at least 0.11 F
1 when an answer existed but did not change when no answer existed; here our models generalized on notes from the outside institution, losing at most 0.02 agreement. We analyzed textual differences and found that syntactic and semantic differences in both clinically relevant sentences and surrounding contexts significantly influenced model performance., Discussion and Conclusion: Model generalization performance decreased on notes from nonspecialists; out-of-institution generalization on epilepsy specialist notes required small changes to preprocessing but was especially good for seizure frequency text and date of last seizure text, opening opportunities for multicenter collaborations using these outcomes., Competing Interests: None declared., (© The Author(s) 2023. Published by Oxford University Press on behalf of the American Medical Informatics Association.)- Published
- 2023
- Full Text
- View/download PDF
37. Quantifying interictal intracranial EEG to predict focal epilepsy.
- Author
-
Gallagher RS, Sinha N, Pattnaik AR, Ojemann WKS, Lucas A, LaRocque JJ, Bernabei JM, Greenblatt AS, Sweeney EM, Chen HI, Davis KA, Conrad EC, and Litt B
- Abstract
Introduction: Intracranial EEG (IEEG) is used for 2 main purposes, to determine: (1) if epileptic networks are amenable to focal treatment and (2) where to intervene. Currently these questions are answered qualitatively and sometimes differently across centers. There is a need for objective, standardized methods to guide surgical decision making and to enable large scale data analysis across centers and prospective clinical trials., Methods: We analyzed interictal data from 101 patients with drug resistant epilepsy who underwent presurgical evaluation with IEEG. We chose interictal data because of its potential to reduce the morbidity and cost associated with ictal recording. 65 patients had unifocal seizure onset on IEEG, and 36 were non-focal or multi-focal. We quantified the spatial dispersion of implanted electrodes and interictal IEEG abnormalities for each patient. We compared these measures against the "5 Sense Score (5SS)," a pre-implant estimate of the likelihood of focal seizure onset, and assessed their ability to predict the clinicians' choice of therapeutic intervention and the patient outcome., Results: The spatial dispersion of IEEG electrodes predicted network focality with precision similar to the 5SS (AUC = 0.67), indicating that electrode placement accurately reflected pre-implant information. A cross-validated model combining the 5SS and the spatial dispersion of interictal IEEG abnormalities significantly improved this prediction (AUC = 0.79; p<0.05). The combined model predicted ultimate treatment strategy (surgery vs. device) with an AUC of 0.81 and post-surgical outcome at 2 years with an AUC of 0.70. The 5SS, interictal IEEG, and electrode placement were not correlated and provided complementary information., Conclusions: Quantitative, interictal IEEG significantly improved upon pre-implant estimates of network focality and predicted treatment with precision approaching that of clinical experts. We present this study as an important step in building standardized, quantitative tools to guide epilepsy surgery.
- Published
- 2023
38. Thalamic stereo-EEG in epilepsy surgery: where do we stand?
- Author
-
Bernabei JM, Litt B, and Cajigas I
- Subjects
- Humans, Seizures, Brain, Electroencephalography, Epilepsy diagnosis, Epilepsy surgery
- Published
- 2023
- Full Text
- View/download PDF
39. Characterizing the treatment gap in the United States among adult patients with a new diagnosis of epilepsy.
- Author
-
Decker BM, Ellis CA, Schriver E, Fischbein K, Smith D, Moyer JT, Kulick-Soper CV, Mowery D, Litt B, and Hill CE
- Subjects
- Humans, Adult, United States epidemiology, Retrospective Studies, Seizures drug therapy, Electronic Health Records, Anticonvulsants therapeutic use, Epilepsy diagnosis, Epilepsy drug therapy, Epilepsy epidemiology
- Abstract
Objective: Epilepsy is largely a treatable condition with antiseizure medication (ASM). Recent national administrative claims data suggest one third of newly diagnosed adult epilepsy patients remain untreated 3 years after diagnosis. We aimed to quantify and characterize this treatment gap within a large US academic health system leveraging the electronic health record for enriched clinical detail., Methods: This retrospective cohort study evaluated the proportion of adult patients in the health system from 2012 to 2020 who remained untreated 3 years after initial epilepsy diagnosis. To identify incident epilepsy, we applied validated administrative health data criteria of two encounters for epilepsy/seizures and/or convulsions, and we required no ASM prescription preceding the first encounter. Engagement with the health system at least 2 years before and at least 3 years after diagnosis was required. Among subjects who met administrative data diagnosis criteria, we manually reviewed medical records for a subset of 240 subjects to verify epilepsy diagnosis, confirm treatment status, and elucidate reason for nontreatment. These results were applied to estimate the proportion of the full cohort with untreated epilepsy., Results: Of 831 patients who were automatically classified as having incident epilepsy by inclusion criteria, 80 (10%) remained untreated 3 years after incident epilepsy diagnosis. Manual chart review of incident epilepsy classification revealed only 33% (78/240) had true incident epilepsy. We found untreated patients were more frequently misclassified (p < .001). Using corrected counts, we extrapolated to the full cohort (831) and estimated <1%-3% had true untreated epilepsy., Significance: We found a substantially lower proportion of patients with newly diagnosed epilepsy remained untreated compared to previous estimates from administrative data analysis. Manual chart review revealed patients were frequently misclassified as having incident epilepsy, particularly patients who were not treated with an ASM. Administrative data analyses utilizing only diagnosis codes may misclassify patients as having incident epilepsy., (© 2023 The Authors. Epilepsia published by Wiley Periodicals LLC on behalf of International League Against Epilepsy.)
- Published
- 2023
- Full Text
- View/download PDF
40. Long-term epilepsy outcome dynamics revealed by natural language processing of clinic notes.
- Author
-
Xie K, Gallagher RS, Shinohara RT, Xie SX, Hill CE, Conrad EC, Davis KA, Roth D, Litt B, and Ellis CA
- Subjects
- Humans, Retrospective Studies, Seizures, Electronic Health Records, Natural Language Processing, Epilepsy epidemiology
- Abstract
Objective: Electronic medical records allow for retrospective clinical research with large patient cohorts. However, epilepsy outcomes are often contained in free text notes that are difficult to mine. We recently developed and validated novel natural language processing (NLP) algorithms to automatically extract key epilepsy outcome measures from clinic notes. In this study, we assessed the feasibility of extracting these measures to study the natural history of epilepsy at our center., Methods: We applied our previously validated NLP algorithms to extract seizure freedom, seizure frequency, and date of most recent seizure from outpatient visits at our epilepsy center from 2010 to 2022. We examined the dynamics of seizure outcomes over time using Markov model-based probability and Kaplan-Meier analyses., Results: Performance of our algorithms on classifying seizure freedom was comparable to that of human reviewers (algorithm F
1 = .88 vs. human annotator κ = .86). We extracted seizure outcome data from 55 630 clinic notes from 9510 unique patients written by 53 unique authors. Of these, 30% were classified as seizure-free since the last visit, 48% of non-seizure-free visits contained a quantifiable seizure frequency, and 47% of all visits contained the date of most recent seizure occurrence. Among patients with at least five visits, the probabilities of seizure freedom at the next visit ranged from 12% to 80% in patients having seizures or seizure-free at the prior three visits, respectively. Only 25% of patients who were seizure-free for 6 months remained seizure-free after 10 years., Significance: Our findings demonstrate that epilepsy outcome measures can be extracted accurately from unstructured clinical note text using NLP. At our tertiary center, the disease course often followed a remitting and relapsing pattern. This method represents a powerful new tool for clinical research with many potential uses and extensions to other clinical questions., (© 2023 International League Against Epilepsy.)- Published
- 2023
- Full Text
- View/download PDF
41. Quantitative approaches to guide epilepsy surgery from intracranial EEG.
- Author
-
Bernabei JM, Li A, Revell AY, Smith RJ, Gunnarsdottir KM, Ong IZ, Davis KA, Sinha N, Sarma S, and Litt B
- Subjects
- Humans, Electroencephalography methods, Seizures diagnosis, Seizures surgery, Research Design, Electrocorticography methods, Epilepsy surgery, Epilepsy pathology
- Abstract
Over the past 10 years, the drive to improve outcomes from epilepsy surgery has stimulated widespread interest in methods to quantitatively guide epilepsy surgery from intracranial EEG (iEEG). Many patients fail to achieve seizure freedom, in part due to the challenges in subjective iEEG interpretation. To address this clinical need, quantitative iEEG analytics have been developed using a variety of approaches, spanning studies of seizures, interictal periods, and their transitions, and encompass a range of techniques including electrographic signal analysis, dynamical systems modeling, machine learning and graph theory. Unfortunately, many methods fail to generalize to new data and are sensitive to differences in pathology and electrode placement. Here, we critically review selected literature on computational methods of identifying the epileptogenic zone from iEEG. We highlight shared methodological challenges common to many studies in this field and propose ways that they can be addressed. One fundamental common pitfall is a lack of open-source, high-quality data, which we specifically address by sharing a centralized high-quality, well-annotated, multicentre dataset consisting of >100 patients to support larger and more rigorous studies. Ultimately, we provide a road map to help these tools reach clinical trials and hope to improve the lives of future patients., (© The Author(s) 2023. Published by Oxford University Press on behalf of the Guarantors of Brain. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.)
- Published
- 2023
- Full Text
- View/download PDF
42. Remote effects of temporal lobe epilepsy surgery: Long-term morphological changes after surgical resection.
- Author
-
Arnold TC, Kini LG, Bernabei JM, Revell AY, Das SR, Stein JM, Lucas TH, Englot DJ, Morgan VL, Litt B, and Davis KA
- Subjects
- Humans, Cerebral Cortical Thinning, Anterior Temporal Lobectomy methods, Temporal Lobe surgery, Epilepsy, Temporal Lobe surgery, Epilepsy
- Abstract
Objective: Epilepsy surgery is an effective treatment for drug-resistant patients. However, how different surgical approaches affect long-term brain structure remains poorly characterized. Here, we present a semiautomated method for quantifying structural changes after epilepsy surgery and compare the remote structural effects of two approaches, anterior temporal lobectomy (ATL), and selective amygdalohippocampectomy (SAH)., Methods: We studied 36 temporal lobe epilepsy patients who underwent resective surgery (ATL = 22, SAH = 14). All patients received same-scanner MR imaging preoperatively and postoperatively (mean 2 years). To analyze postoperative structural changes, we segmented the resection zone and modified the Advanced Normalization Tools (ANTs) longitudinal cortical pipeline to account for resections. We compared global and regional annualized cortical thinning between surgical treatments., Results: Across procedures, there was significant cortical thinning in the ipsilateral insula, fusiform, pericalcarine, and several temporal lobe regions outside the resection zone as well as the contralateral hippocampus. Additionally, increased postoperative cortical thickness was seen in the supramarginal gyrus. Patients treated with ATL exhibited greater annualized cortical thinning compared with SAH cases (ATL: -0.08 ± 0.11 mm per year, SAH: -0.01 ± 0.02 mm per year, t = 2.99, P = 0.006). There were focal postoperative differences between the two treatment groups in the ipsilateral insula (P = 0.039, corrected). Annualized cortical thinning rates correlated with preoperative cortical thickness (r = 0.60, P < 0.001) and had weaker associations with age at surgery (r = -0.33, P = 0.051) and disease duration (r = -0.42, P = 0.058)., Significance: Our evidence suggests that selective procedures are associated with less cortical thinning and that earlier surgical intervention may reduce long-term impacts on brain structure., (© 2023 The Authors. Epilepsia Open published by Wiley Periodicals LLC on behalf of International League Against Epilepsy.)
- Published
- 2023
- Full Text
- View/download PDF
43. A pharmacokinetic model of antiseizure medication load to guide care in the epilepsy monitoring unit.
- Author
-
Ghosn NJ, Xie K, Pattnaik AR, Gugger JJ, Ellis CA, Sweeney E, Fox E, Bernabei JM, Johnson J, Boccanfuso J, Litt B, and Conrad EC
- Subjects
- Humans, Electrocorticography, Length of Stay, Logistic Models, Seizures drug therapy, Drug Resistant Epilepsy drug therapy
- Abstract
Objective: Evaluating patients with drug-resistant epilepsy often requires inducing seizures by tapering antiseizure medications (ASMs) in the epilepsy monitoring unit (EMU). The relationship between ASM taper strategy, seizure timing, and severity remains unclear. In this study, we developed and validated a pharmacokinetic model of total ASM load and tested its association with seizure occurrence and severity in the EMU., Methods: We studied 80 patients who underwent intracranial electroencephalographic recording for epilepsy surgery planning. We developed a first order pharmacokinetic model of the ASMs administered in the EMU to generate a continuous metric of overall ASM load. We then related modeled ASM load to seizure likelihood and severity. We determined the association between the rate of ASM load reduction, the length of hospital stay, and the probability of having a severe seizure. Finally, we used modeled ASM load to predict oncoming seizures., Results: Seizures occurred in the bottom 50th percentile of sampled ASM loads across the cohort (p < .0001, Wilcoxon signed-rank test), and seizures requiring rescue therapy occurred at lower ASM loads than seizures that did not require rescue therapy (logistic regression mixed effects model, odds ratio = .27, p = .01). Greater ASM decrease early in the EMU was not associated with an increased likelihood of having a severe seizure, nor with a shorter length of stay., Significance: A pharmacokinetic model can accurately estimate ASM levels for patients in the EMU. Lower modeled ASM levels are associated with increased seizure likelihood and seizure severity. We show that ASM load, rather than ASM taper speed, is associated with severe seizures. ASM modeling has the potential to help optimize taper strategy to minimize severe seizures while maximizing diagnostic yield., (© 2023 International League Against Epilepsy.)
- Published
- 2023
- Full Text
- View/download PDF
44. Quantifying trial-by-trial variability during cortico-cortical evoked potential mapping of epileptogenic tissue.
- Author
-
Cornblath EJ, Lucas A, Armstrong C, Greenblatt AS, Stein JM, Hadar PN, Raghupathi R, Marsh E, Litt B, Davis KA, and Conrad EC
- Subjects
- Humans, Electric Stimulation methods, Electroencephalography methods, Brain, Brain Mapping methods, Evoked Potentials physiology, Epilepsy diagnosis
- Abstract
Objective: Measuring cortico-cortical evoked potentials (CCEPs) is a promising tool for mapping epileptic networks, but it is not known how variability in brain state and stimulation technique might impact the use of CCEPs for epilepsy localization. We test the hypotheses that (1) CCEPs demonstrate systematic variability across trials and (2) CCEP amplitudes depend on the timing of stimulation with respect to endogenous, low-frequency oscillations., Methods: We studied 11 patients who underwent CCEP mapping after stereo-electroencephalography electrode implantation for surgical evaluation of drug-resistant epilepsy. Evoked potentials were measured from all electrodes after each pulse of a 30 s, 1 Hz bipolar stimulation train. We quantified monotonic trends, phase dependence, and standard deviation (SD) of N1 (15-50 ms post-stimulation) and N2 (50-300 ms post-stimulation) amplitudes across the 30 stimulation trials for each patient. We used linear regression to quantify the relationship between measures of CCEP variability and the clinical seizure-onset zone (SOZ) or interictal spike rates., Results: We found that N1 and N2 waveforms exhibited both positive and negative monotonic trends in amplitude across trials. SOZ electrodes and electrodes with high interictal spike rates had lower N1 and N2 amplitudes with higher SD across trials. Monotonic trends of N1 and N2 amplitude were more positive when stimulating from an area with higher interictal spike rate. We also found intermittent synchronization of trial-level N1 amplitude with low-frequency phase in the hippocampus, which did not localize the SOZ., Significance: These findings suggest that standard approaches for CCEP mapping, which involve computing a trial-averaged response over a .2-1 Hz stimulation train, may be masking inter-trial variability that localizes to epileptogenic tissue. We also found that CCEP N1 amplitudes synchronize with ongoing low-frequency oscillations in the hippocampus. Further targeted experiments are needed to determine whether phase-locked stimulation could have a role in localizing epileptogenic tissue., (© 2023 International League Against Epilepsy.)
- Published
- 2023
- Full Text
- View/download PDF
45. Spike patterns surrounding sleep and seizures localize the seizure-onset zone in focal epilepsy.
- Author
-
Conrad EC, Revell AY, Greenblatt AS, Gallagher RS, Pattnaik AR, Hartmann N, Gugger JJ, Shinohara RT, Litt B, Marsh ED, and Davis KA
- Subjects
- Humans, Female, Adolescent, Young Adult, Adult, Middle Aged, Aged, Retrospective Studies, Seizures surgery, Sleep, Electroencephalography, Epilepsy, Temporal Lobe, Epilepsies, Partial, Epilepsy surgery
- Abstract
Objective: Interictal spikes help localize seizure generators as part of surgical planning for drug-resistant epilepsy. However, there are often multiple spike populations whose frequencies change over time, influenced by brain state. Understanding state changes in spike rates will improve our ability to use spikes for surgical planning. Our goal was to determine the effect of sleep and seizures on interictal spikes, and to use sleep and seizure-related changes in spikes to localize the seizure-onset zone (SOZ)., Methods: We performed a retrospective analysis of intracranial electroencephalography (EEG) data from patients with focal epilepsy. We automatically detected interictal spikes and we classified different time periods as awake or asleep based on the ratio of alpha to delta power, with a secondary analysis using the recently published SleepSEEG algorithm. We analyzed spike rates surrounding sleep and seizures. We developed a model to localize the SOZ using state-dependent spike rates., Results: We analyzed data from 101 patients (54 women, age range 16-69). The normalized alpha-delta power ratio accurately classified wake from sleep periods (area under the curve = .90). Spikes were more frequent in sleep than wakefulness and in the post-ictal compared to the pre-ictal state. Patients with temporal lobe epilepsy had a greater wake-to-sleep and pre- to post-ictal spike rate increase compared to patients with extra-temporal epilepsy. A machine-learning classifier incorporating state-dependent spike rates accurately identified the SOZ (area under the curve = .83). Spike rates tended to be higher and better localize the seizure-onset zone in non-rapid eye movement (NREM) sleep than in wake or REM sleep., Significance: The change in spike rates surrounding sleep and seizures differs between temporal and extra-temporal lobe epilepsy. Spikes are more frequent and better localize the SOZ in sleep, particularly in NREM sleep. Quantitative analysis of spikes may provide useful ancillary data to localize the SOZ and improve surgical planning., (© 2022 The Authors. Epilepsia published by Wiley Periodicals LLC on behalf of International League Against Epilepsy.)
- Published
- 2023
- Full Text
- View/download PDF
46. Engineers drive new directions in translational epilepsy research.
- Author
-
Litt B
- Subjects
- Humans, Engineering, Translational Research, Biomedical, Epilepsy
- Published
- 2022
- Full Text
- View/download PDF
47. Towards network-guided neuromodulation for epilepsy.
- Author
-
Piper RJ, Richardson RM, Worrell G, Carmichael DW, Baldeweg T, Litt B, Denison T, and Tisdall MM
- Subjects
- Adult, Child, Humans, Anticonvulsants, Thalamus, Deep Brain Stimulation, Epilepsy therapy, Subthalamic Nucleus, Epilepsies, Partial
- Abstract
Epilepsy is well-recognized as a disorder of brain networks. There is a growing body of research to identify critical nodes within dynamic epileptic networks with the aim to target therapies that halt the onset and propagation of seizures. In parallel, intracranial neuromodulation, including deep brain stimulation and responsive neurostimulation, are well-established and expanding as therapies to reduce seizures in adults with focal-onset epilepsy; and there is emerging evidence for their efficacy in children and generalized-onset seizure disorders. The convergence of these advancing fields is driving an era of 'network-guided neuromodulation' for epilepsy. In this review, we distil the current literature on network mechanisms underlying neurostimulation for epilepsy. We discuss the modulation of key 'propagation points' in the epileptogenic network, focusing primarily on thalamic nuclei targeted in current clinical practice. These include (i) the anterior nucleus of thalamus, now a clinically approved and targeted site for open loop stimulation, and increasingly targeted for responsive neurostimulation; and (ii) the centromedian nucleus of the thalamus, a target for both deep brain stimulation and responsive neurostimulation in generalized-onset epilepsies. We discuss briefly the networks associated with other emerging neuromodulation targets, such as the pulvinar of the thalamus, piriform cortex, septal area, subthalamic nucleus, cerebellum and others. We report synergistic findings garnered from multiple modalities of investigation that have revealed structural and functional networks associated with these propagation points - including scalp and invasive EEG, and diffusion and functional MRI. We also report on intracranial recordings from implanted devices which provide us data on the dynamic networks we are aiming to modulate. Finally, we review the continuing evolution of network-guided neuromodulation for epilepsy to accelerate progress towards two translational goals: (i) to use pre-surgical network analyses to determine patient candidacy for neurostimulation for epilepsy by providing network biomarkers that predict efficacy; and (ii) to deliver precise, personalized and effective antiepileptic stimulation to prevent and arrest seizure propagation through mapping and modulation of each patients' individual epileptogenic networks., (© The Author(s) 2022. Published by Oxford University Press on behalf of the Guarantors of Brain.)
- Published
- 2022
- Full Text
- View/download PDF
48. Development of a natural language processing algorithm to extract seizure types and frequencies from the electronic health record.
- Author
-
Decker BM, Turco A, Xu J, Terman SW, Kosaraju N, Jamil A, Davis KA, Litt B, Ellis CA, Khankhanian P, and Hill CE
- Subjects
- Algorithms, Electronic Health Records, Humans, Seizures, Epilepsy drug therapy, Natural Language Processing
- Abstract
Objective: To develop a natural language processing (NLP) algorithm to abstract seizure types and frequencies from electronic health records (EHR)., Background: Seizure frequency measurement is an epilepsy quality metric. Yet, abstraction of seizure frequency from the EHR is laborious. We present an NLP algorithm to extract seizure data from unstructured text of clinic notes. Algorithm performance was assessed at two epilepsy centers., Methods: We developed a rules-based NLP algorithm to recognize terms related to seizures and frequency within the text of an outpatient encounter. Algorithm output (e.g. number of seizures of a particular type within a time interval) was compared to seizure data manually annotated by two expert reviewers ("gold standard"). The algorithm was developed from 150 clinic notes from institution #1 (development set), then tested on a separate set of 219 notes from institution #1 (internal test set) with 248 unique seizure frequency elements. The algorithm was separately applied to 100 notes from institution #2 (external test set) with 124 unique seizure frequency elements. Algorithm performance was measured by recall (sensitivity), precision (positive predictive value), and F1 score (geometric mean of precision and recall)., Results: In the internal test set, the algorithm demonstrated 70% recall (173/248), 95% precision (173/182), and 0.82 F1 score compared to manual review. Algorithm performance in the external test set was lower with 22% recall (27/124), 73% precision (27/37), and 0.40 F1 score., Conclusions: These results suggest NLP extraction of seizure types and frequencies is feasible, though not without challenges in generalizability for large-scale implementation., Competing Interests: Declaration of Competing Interest None., (Copyright © 2022 British Epilepsy Association. Published by Elsevier Ltd. All rights reserved.)
- Published
- 2022
- Full Text
- View/download PDF
49. External drivers of BOLD signal's non-stationarity.
- Author
-
Ashourvan A, Pequito S, Bertolero M, Kim JZ, Bassett DS, and Litt B
- Subjects
- Brain diagnostic imaging, Brain physiology, Humans, Magnetic Resonance Imaging methods, Connectome
- Abstract
A fundamental challenge in neuroscience is to uncover the principles governing how the brain interacts with the external environment. However, assumptions about external stimuli fundamentally constrain current computational models. We show in silico that unknown external stimulation can produce error in the estimated linear time-invariant dynamical system. To address these limitations, we propose an approach to retrieve the external (unknown) input parameters and demonstrate that the estimated system parameters during external input quiescence uncover spatiotemporal profiles of external inputs over external stimulation periods more accurately. Finally, we unveil the expected (and unexpected) sensory and task-related extra-cortical input profiles using functional magnetic resonance imaging data acquired from 96 subjects (Human Connectome Project) during the resting-state and task scans. This dynamical systems model of the brain offers information on the structure and dimensionality of the BOLD signal's external drivers and shines a light on the likely external sources contributing to the BOLD signal's non-stationarity. Our findings show the role of exogenous inputs in the BOLD dynamics and highlight the importance of accounting for external inputs to unravel the brain's time-varying functional dynamics., Competing Interests: The authors have declared that no competing interests exist.
- Published
- 2022
- Full Text
- View/download PDF
50. A framework For brain atlases: Lessons from seizure dynamics.
- Author
-
Revell AY, Silva AB, Arnold TC, Stein JM, Das SR, Shinohara RT, Bassett DS, Litt B, and Davis KA
- Subjects
- Algorithms, Brain Mapping, Humans, Seizures diagnostic imaging, Brain diagnostic imaging, Magnetic Resonance Imaging
- Abstract
Brain maps, or atlases, are essential tools for studying brain function and organization. The abundance of available atlases used across the neuroscience literature, however, creates an implicit challenge that may alter the hypotheses and predictions we make about neurological function and pathophysiology. Here, we demonstrate how parcellation scale, shape, anatomical coverage, and other atlas features may impact our prediction of the brain's function from its underlying structure. We show how network topology, structure-function correlation (SFC), and the power to test specific hypotheses about epilepsy pathophysiology may change as a result of atlas choice and atlas features. Through the lens of our disease system, we propose a general framework and algorithm for atlas selection. This framework aims to maximize the descriptive, explanatory, and predictive validity of an atlas. Broadly, our framework strives to provide empirical guidance to neuroscience research utilizing the various atlases published over the last century., Competing Interests: Declaration of Competing Interest The authors declare no competing interests., (Copyright © 2022 The Author(s). Published by Elsevier Inc. All rights reserved.)
- Published
- 2022
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.