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Dive into the research topics where Meysam Golmohammadi is active.

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Featured researches published by Meysam Golmohammadi.


ieee signal processing in medicine and biology symposium | 2015

Improved EEG event classification using differential energy

Amir Harati; Meysam Golmohammadi; Silvia Lopez; Iyad Obeid; Joseph Picone

Feature extraction for automatic classification of EEG signals typically relies on time frequency representations of the signal. Techniques such as cepstral-based filter banks or wavelets are popular analysis techniques in many signal processing applications including EEG classification. In this paper, we present a comparison of a variety of approaches to estimating and postprocessing features. To further aid in discrimination of periodic signals from aperiodic signals, we add a differential energy term. We evaluate our approaches on the TUH EEG Corpus, which is the largest publicly available EEG corpus and an exceedingly challenging task due to the clinical nature of the data. We demonstrate that a variant of a standard filter bank-based approach, coupled with first and second derivatives, provides a substantial reduction in the overall error rate. The combination of differential energy and derivatives produces a 24% absolute reduction in the error rate and improves our ability to discriminate between signal events and background noise. This relatively simple approach proves to be comparable to other popular feature extraction approaches such as wavelets, but is much more computationally efficient.


ieee signal processing in medicine and biology symposium | 2017

Optimizing channel selection for seizure detection

Vinit Shah; Meysam Golmohammadi; S. Ziyabari; E. von Weltin; Iyad Obeid; Joseph Picone

Interpretation of electroencephalogram (EEG) signals can be complicated by obfuscating artifacts. Artifact detection plays an important role in the observation and analysis of EEG signals. Spatial information contained in the placement of the electrodes can be exploited to accurately detect artifacts. However, when fewer electrodes are used, less spatial information is available, making it harder to detect artifacts. In this study, we investigate the performance of a deep learning algorithm, CNN-LSTM, on several channel configurations. Each configuration was designed to minimize the amount of spatial information lost compared to a standard 22-channel EEG. Systems using a reduced number of channels ranging from 8 to 20 achieved sensitivities between 33% and 37% with false alarms in the range of [38, 50] per 24 hours. False alarms increased dramatically (e.g., over 300 per 24 hours) when the number of channels was further reduced. Baseline performance of a system that used all 22 channels was 39% sensitivity with 23 false alarms. Since the 22-channel system was the only system that included referential channels, the rapid increase in the false alarm rate as the number of channels was reduced underscores the importance of retaining referential channels for artifact reduction. This cautionary result is important because one of the biggest differences between various types of EEGs administered is the type of referential channel used.


ieee signal processing in medicine and biology symposium | 2016

Semi-automated annotation of signal events in clinical EEG data

Scott Yang; Silvia Lopez; Meysam Golmohammadi; Iyad Obeid; Joseph Picone

To be effective, state of the art machine learning technology needs large amounts of annotated data. There are numerous compelling applications in healthcare that can benefit from high performance automated decision support systems provided by deep learning technology, but they lack the comprehensive data resources required to apply sophisticated machine learning models. Further, for economic reasons, it is very difficult to justify the creation of large annotated corpora for these applications. Hence, automated annotation techniques become increasingly important. In this study, we investigated the effectiveness of using an active learning algorithm to automatically annotate a large EEG corpus. The algorithm is designed to annotate six types of EEG events. Two model training schemes, namely threshold-based and volume-based, are evaluated. In the threshold-based scheme the threshold of confidence scores is optimized in the initial training iteration, whereas for the volume-based scheme only a certain amount of data is preserved after each iteration. Recognition performance is improved 2% absolute and the system is capable of automatically annotating previously unlabeled data. Given that the interpretation of clinical EEG data is an exceedingly difficult task, this study provides some evidence that the proposed method is a viable alternative to expensive manual annotation.


ieee signal processing in medicine and biology symposium | 2016

An analysis of two common reference points for EEGS

Silvia Lopez; Aaron Gross; Scott Yang; Meysam Golmohammadi; Iyad Obeid; Joseph Picone

Clinical electroencephalographic (EEG) data varies significantly depending on a number of operational conditions (e.g., the type and placement of electrodes, the type of electrical grounding used). This investigation explores the statistical differences present in two different referential montages: Linked Ear (LE) and Averaged Reference (AR). Each of these accounts for approximately 45% of the data in the TUH EEG Corpus. In this study, we explore the impact this variability has on machine learning performance. We compare the statistical properties of features generated using these two montages, and explore the impact of performance on our standard Hidden Markov Model (HMM) based classification system. We show that a system trained on LE data significantly outperforms one trained only on AR data (77.2% vs. 61.4%). We also demonstrate that performance of a system trained on both data sets is somewhat compromised (71.4% vs. 77.2%). A statistical analysis of the data suggests that mean, variance and channel normalization should be considered. However, cepstral mean subtraction failed to produce an improvement in performance, suggesting that the impact of these statistical differences is subtler.


ieee signal processing in medicine and biology symposium | 2016

Enhanced visualizations for improved real-time EEG monitoring

M. Thiess; E. Krome; Meysam Golmohammadi; Iyad Obeid; Joseph Picone

An electroencephalogram, or EEG, is used to monitor the electrical activity in the brain through electrodes placed on the scalp. An EEG is a multi-channel time-varying signal describing voltages in different regions on the scalp, measured using electrodes. EEG recordings are interpreted using a montage, which defines the channels as differences between these electrodes. AutoEEG is a system that automatically interprets clinical EEGs and includes a variety of analytics that can be used to detect the onset of life-altering events such as seizures.


arXiv: Learning | 2017

Deep Architectures for Automated Seizure Detection in Scalp EEGs.

Meysam Golmohammadi; Saeedeh Ziyabari; Vinit Shah; Silvia Lopez de Diego; Iyad Obeid; Joseph Picone


arXiv: Quantitative Methods | 2018

The Temple University Hospital Seizure Detection Corpus

Vinit Shah; Eva von Weltin; Silvia Lopez; James Riley McHugh; Lily Veloso; Meysam Golmohammadi; Iyad Obeid; Joseph Picone


ieee signal processing in medicine and biology symposium | 2017

Electroencephalographic slowing: A primary source of error in automatic seizure detection

E. von Weltin; T. Ahsan; Vinit Shah; D. Jamshed; Meysam Golmohammadi; Iyad Obeid; Joseph Picone


ieee signal processing in medicine and biology symposium | 2017

Gated recurrent networks for seizure detection

Meysam Golmohammadi; S. Ziyabari; Vinit Shah; E. von Weltin; C. Campbell; Iyad Obeid; Joseph Picone


arXiv: Learning | 2017

Automatic Analysis of EEGs Using Big Data and Hybrid Deep Learning Architectures.

Meysam Golmohammadi; Amir Hossein Harati Nejad Torbati; Silvia Lopez de Diego; Iyad Obeid; Joseph Picone

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