8,440 research outputs found

    Data Mining in Neurology

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    Using artificial intelligence and longitudinal location data to differentiate persons who develop posttraumatic stress disorder following childhood trauma

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    Post-traumatic stress disorder (PTSD) is characterized by complex, heterogeneous symptomology, thus detection outside traditional clinical contexts is difficult. Fortunately, advances in mobile technology, passive sensing, and analytics offer promising avenues for research and development. The present study examined the ability to utilize Global Positioning System (GPS) data, derived passively from a smartphone across seven days, to detect PTSD diagnostic status among a cohort (N = 185) of high-risk, previously traumatized women. Using daily time spent away and maximum distance traveled from home as a basis for model feature engineering, the results suggested that diagnostic group status can be predicted out-of-fold with high performance (AUC = 0.816, balanced sensitivity = 0.743, balanced specificity = 0.8, balanced accuracy = 0.771). Results further implicate the potential utility of GPS information as a digital biomarker of the PTSD behavioral repertoire. Future PTSD research will benefit from application of GPS data within larger, more diverse populations

    Using Movies to Probe the Neurobiology of Anxiety

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    Over the past century, research has helped us build a fundamental understanding of the neurobiological underpinnings of anxiety. Specifically, anxiety engages a broad range of cortico-subcortical neural circuitry. Core to this is a โ€˜defensive response networkโ€™ which includes an amygdala-prefrontal circuit that is hypothesized to drive attentional amplification of threat-relevant stimuli in the environment. In order to help prepare the body for defensive behaviors to threat, anxiety also engages peripheral physiological systems. However, our theoretical frameworks of the neurobiology of anxiety are built mostly on the foundations of tightly-controlled experiments, such as task-based fMRI. Whether these findings generalize to more naturalistic settings is unknown. To address this shortcoming, movie-watching paradigms offer an effective tool at the intersection of tightly controlled and entirely naturalistic experiments. Particularly, using suspenseful movies presents a novel and effective means to induce and study anxiety. In this thesis, I demonstrate the potential of movie-watching paradigms in the study of how trait and state anxiety impact the โ€˜defensive response networkโ€™ in the brain, as well as peripheral physiology. The key findings reveal that trait anxiety is associated with differing amygdala-prefrontal responses to suspenseful movies; specific trait anxiety symptoms are linked to altered states of anxiety during suspenseful movies; and states of anxiety during movies impact brain-body communication. Notably, my results frequently diverged from those of conventional task-based experiments. Taken together, the insights gathered from this thesis underscore the utility of movie-watching paradigms for a more nuanced understanding of how anxiety impacts the brain and peripheral physiology. These outcomes provide compelling evidence that further integration of naturalistic methods will be beneficial in the study of the neurobiology of anxiety

    Aerospace Medicine and Biology: A continuing bibliography with indexes (supplement 153)

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    This bibliography lists 175 reports, articles, and other documents introduced into the NASA scientific and technical information system in March 1976

    ์‹œ๊ณ„์—ด ๋ฐ์ดํ„ฐ ํŒจํ„ด ๋ถ„์„์„ ์œ„ํ•œ ์ข…๋‹จ ์‹ฌ์ธต ํ•™์Šต๋ง ์„ค๊ณ„ ๋ฐฉ๋ฒ•๋ก 

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    ํ•™์œ„๋…ผ๋ฌธ (๋ฐ•์‚ฌ)-- ์„œ์šธ๋Œ€ํ•™๊ต ๋Œ€ํ•™์› : ๊ณต๊ณผ๋Œ€ํ•™ ์ปดํ“จํ„ฐ๊ณตํ•™๋ถ€, 2019. 2. ์žฅ๋ณ‘ํƒ.Pattern recognition within time series data became an important avenue of research in artificial intelligence following the paradigm shift of the fourth industrial revolution. A number of studies related to this have been conducted over the past few years, and research using deep learning techniques are becoming increasingly popular. Due to the nonstationary, nonlinear and noisy nature of time series data, it is essential to design an appropriate model to extract its significant features for pattern recognition. This dissertation not only discusses the study of pattern recognition using various hand-crafted feature engineering techniques using physiological time series signals, but also suggests an end-to-end deep learning design methodology without any feature engineering. Time series signal can be classified into signals having periodic and non-periodic characteristics in the time domain. This thesis proposes two end-to-end deep learning design methodologies for pattern recognition of periodic and non-periodic signals. The first proposed deep learning design methodology is Deep ECGNet. Deep ECGNet offers a design scheme for an end-to-end deep learning model using periodic characteristics of Electrocardiogram (ECG) signals. ECG, recorded from the electrophysiologic patterns of heart muscle during heartbeat, could be a promising candidate to provide a biomarker to estimate event-based stress level. Conventionally, the beat-to-beat alternations, heart rate variability (HRV), from ECG have been utilized to monitor the mental stress status as well as the mortality of cardiac patients. These HRV parameters have the disadvantage of having a 5-minute measurement period. In this thesis, human's stress states were estimated without special hand-crafted feature engineering using only 10-second interval data with the deep learning model. The design methodology of this model incorporates the periodic characteristics of the ECG signal into the model. The main parameters of 1D CNNs and RNNs reflecting the periodic characteristics of ECG were updated corresponding to the stress states. The experimental results proved that the proposed method yielded better performance than those of the existing HRV parameter extraction methods and spectrogram methods. The second proposed methodology is an automatic end-to-end deep learning design methodology using Bayesian optimization for non-periodic signals. Electroencephalogram (EEG) is elicited from the central nervous system (CNS) to yield genuine emotional states, even at the unconscious level. Due to the low signal-to-noise ratio (SNR) of EEG signals, spectral analysis in frequency domain has been conventionally applied to EEG studies. As a general methodology, EEG signals are filtered into several frequency bands using Fourier or wavelet analyses and these band features are then fed into a classifier. This thesis proposes an end-to-end deep learning automatic design method using optimization techniques without this basic feature engineering. Bayesian optimization is a popular optimization technique for machine learning to optimize model hyperparameters. It is often used in optimization problems to evaluate expensive black box functions. In this thesis, we propose a method to perform whole model hyperparameters and structural optimization by using 1D CNNs and RNNs as basic deep learning models and Bayesian optimization. In this way, this thesis proposes the Deep EEGNet model as a method to discriminate human emotional states from EEG signals. Experimental results proved that the proposed method showed better performance than that of conventional method based on the conventional band power feature method. In conclusion, this thesis has proposed several methodologies for time series pattern recognition problems from the feature engineering-based conventional methods to the end-to-end deep learning design methodologies with only raw time series signals. Experimental results showed that the proposed methodologies can be effectively applied to pattern recognition problems using time series data.์‹œ๊ณ„์—ด ๋ฐ์ดํ„ฐ์˜ ํŒจํ„ด ์ธ์‹ ๋ฌธ์ œ๋Š” 4์ฐจ ์‚ฐ์—… ํ˜๋ช…์˜ ํŒจ๋Ÿฌ๋‹ค์ž„ ์ „ํ™˜๊ณผ ํ•จ๊ป˜ ๋งค์šฐ ์ค‘์š”ํ•œ ์ธ๊ณต ์ง€๋Šฅ์˜ ํ•œ ๋ถ„์•ผ๊ฐ€ ๋˜์—ˆ๋‹ค. ์ด์— ๋”ฐ๋ผ, ์ง€๋‚œ ๋ช‡ ๋…„๊ฐ„ ์ด์™€ ๊ด€๋ จ๋œ ๋งŽ์€ ์—ฐ๊ตฌ๋“ค์ด ์ด๋ฃจ์–ด์ ธ ์™”์œผ๋ฉฐ, ์ตœ๊ทผ์—๋Š” ์‹ฌ์ธต ํ•™์Šต๋ง (deep learning networks) ๋ชจ๋ธ์„ ์ด์šฉํ•œ ์—ฐ๊ตฌ๋“ค์ด ์ฃผ๋ฅผ ์ด๋ฃจ์–ด ์™”๋‹ค. ์‹œ๊ณ„์—ด ๋ฐ์ดํ„ฐ๋Š” ๋น„์ •์ƒ, ๋น„์„ ํ˜• ๊ทธ๋ฆฌ๊ณ  ์žก์Œ (nonstationary, nonlinear and noisy) ํŠน์„ฑ์œผ๋กœ ์ธํ•˜์—ฌ ์‹œ๊ณ„์—ด ๋ฐ์ดํ„ฐ์˜ ํŒจํ„ด ์ธ์‹ ์ˆ˜ํ–‰์„ ์œ„ํ•ด์„ , ๋ฐ์ดํ„ฐ์˜ ์ฃผ์š”ํ•œ ํŠน์ง•์ ์„ ์ถ”์ถœํ•˜๊ธฐ ์œ„ํ•œ ์ตœ์ ํ™”๋œ ๋ชจ๋ธ์˜ ์„ค๊ณ„๊ฐ€ ํ•„์ˆ˜์ ์ด๋‹ค. ๋ณธ ๋…ผ๋ฌธ์€ ๋Œ€ํ‘œ์ ์ธ ์‹œ๊ณ„์—ด ๋ฐ์ดํ„ฐ์ธ ์ƒ์ฒด ์‹ ํ˜ธ๋ฅผ ์‚ฌ์šฉํ•˜์—ฌ ์—ฌ๋Ÿฌ ํŠน์ง• ๋ฒกํ„ฐ ์ถ”์ถœ ๋ฐฉ๋ฒ• (hand-crafted feature engineering methods)์„ ์ด์šฉํ•œ ํŒจํ„ด ์ธ์‹ ๊ธฐ๋ฒ•์— ๋Œ€ํ•˜์—ฌ ๋…ผํ•  ๋ฟ๋งŒ ์•„๋‹ˆ๋ผ, ๊ถ๊ทน์ ์œผ๋กœ๋Š” ํŠน์ง• ๋ฒกํ„ฐ ์ถ”์ถœ ๊ณผ์ •์ด ์—†๋Š” ์ข…๋‹จ ์‹ฌ์ธต ํ•™์Šต๋ง ์„ค๊ณ„ ๋ฐฉ๋ฒ•๋ก ์— ๋Œ€ํ•œ ์—ฐ๊ตฌ ๋‚ด์šฉ์„ ๋‹ด๊ณ  ์žˆ๋‹ค. ์‹œ๊ณ„์—ด ์‹ ํ˜ธ๋Š” ์‹œ๊ฐ„ ์ถ• ์ƒ์—์„œ ํฌ๊ฒŒ ์ฃผ๊ธฐ์  ์‹ ํ˜ธ์™€ ๋น„์ฃผ๊ธฐ์  ์‹ ํ˜ธ๋กœ ๊ตฌ๋ถ„ํ•  ์ˆ˜ ์žˆ๋Š”๋ฐ, ๋ณธ ์—ฐ๊ตฌ๋Š” ์ด๋Ÿฌํ•œ ๋‘ ์œ ํ˜•์˜ ์‹ ํ˜ธ๋“ค์— ๋Œ€ํ•œ ํŒจํ„ด ์ธ์‹์„ ์œ„ํ•ด ๋‘ ๊ฐ€์ง€ ์ข…๋‹จ ์‹ฌ์ธต ํ•™์Šต๋ง์— ๋Œ€ํ•œ ์„ค๊ณ„ ๋ฐฉ๋ฒ•๋ก ์„ ์ œ์•ˆํ•œ๋‹ค. ์ฒซ ๋ฒˆ์งธ ์ œ์•ˆ๋œ ๋ฐฉ๋ฒ•๋ก ์„ ์ด์šฉํ•ด ์„ค๊ณ„๋œ ๋ชจ๋ธ์€ ์‹ ํ˜ธ์˜ ์ฃผ๊ธฐ์  ํŠน์„ฑ์„ ์ด์šฉํ•œ Deep ECGNet์ด๋‹ค. ์‹ฌ์žฅ ๊ทผ์œก์˜ ์ „๊ธฐ ์ƒ๋ฆฌํ•™์  ํŒจํ„ด์œผ๋กœ๋ถ€ํ„ฐ ๊ธฐ๋ก๋œ ์‹ฌ์ „๋„ (Electrocardiogram, ECG)๋Š” ์ด๋ฒคํŠธ ๊ธฐ๋ฐ˜ ์ŠคํŠธ๋ ˆ์Šค ์ˆ˜์ค€์„ ์ถ”์ •ํ•˜๊ธฐ ์œ„ํ•œ ์ฒ™๋„ (bio marker)๋ฅผ ์ œ๊ณตํ•˜๋Š” ์œ ํšจํ•œ ๋ฐ์ดํ„ฐ๊ฐ€ ๋  ์ˆ˜ ์žˆ๋‹ค. ์ „ํ†ต์ ์œผ๋กœ ์‹ฌ์ „๋„์˜ ์‹ฌ๋ฐ•์ˆ˜ ๋ณ€๋™์„ฑ (Herat Rate Variability, HRV) ๋งค๊ฐœ๋ณ€์ˆ˜ (parameter)๋Š” ์‹ฌ์žฅ ์งˆํ™˜ ํ™˜์ž์˜ ์ •์‹ ์  ์ŠคํŠธ๋ ˆ์Šค ์ƒํƒœ ๋ฐ ์‚ฌ๋ง๋ฅ ์„ ๋ชจ๋‹ˆํ„ฐ๋งํ•˜๋Š” ๋ฐ ์‚ฌ์šฉ๋˜์—ˆ๋‹ค. ํ•˜์ง€๋งŒ, ํ‘œ์ค€ ์‹ฌ๋ฐ•์ˆ˜ ๋ณ€๋™์„ฑ ๋งค๊ฐœ ๋ณ€์ˆ˜๋Š” ์ธก์ • ์ฃผ๊ธฐ๊ฐ€ 5๋ถ„ ์ด์ƒ์œผ๋กœ, ์ธก์ • ์‹œ๊ฐ„์ด ๊ธธ๋‹ค๋Š” ๋‹จ์ ์ด ์žˆ๋‹ค. ๋ณธ ๋…ผ๋ฌธ์—์„œ๋Š” ์‹ฌ์ธต ํ•™์Šต๋ง ๋ชจ๋ธ์„ ์ด์šฉํ•˜์—ฌ 10์ดˆ ๊ฐ„๊ฒฉ์˜ ECG ๋ฐ์ดํ„ฐ๋งŒ์„ ์ด์šฉํ•˜์—ฌ, ์ถ”๊ฐ€์ ์ธ ํŠน์ง• ๋ฒกํ„ฐ์˜ ์ถ”์ถœ ๊ณผ์ • ์—†์ด ์ธ๊ฐ„์˜ ์ŠคํŠธ๋ ˆ์Šค ์ƒํƒœ๋ฅผ ์ธ์‹ํ•  ์ˆ˜ ์žˆ์Œ์„ ๋ณด์ธ๋‹ค. ์ œ์•ˆ๋œ ์„ค๊ณ„ ๊ธฐ๋ฒ•์€ ECG ์‹ ํ˜ธ์˜ ์ฃผ๊ธฐ์  ํŠน์„ฑ์„ ๋ชจ๋ธ์— ๋ฐ˜์˜ํ•˜์˜€๋Š”๋ฐ, ECG์˜ ์€๋‹‰ ํŠน์ง• ์ถ”์ถœ๊ธฐ๋กœ ์‚ฌ์šฉ๋œ 1D CNNs ๋ฐ RNNs ๋ชจ๋ธ์˜ ์ฃผ์š” ๋งค๊ฐœ ๋ณ€์ˆ˜์— ์ฃผ๊ธฐ์  ํŠน์„ฑ์„ ๋ฐ˜์˜ํ•จ์œผ๋กœ์จ, ํ•œ ์ฃผ๊ธฐ ์‹ ํ˜ธ์˜ ์ŠคํŠธ๋ ˆ์Šค ์ƒํƒœ์— ๋”ฐ๋ฅธ ์ฃผ์š” ํŠน์ง•์ ์„ ์ข…๋‹จ ํ•™์Šต๋ง ๋‚ด๋ถ€์ ์œผ๋กœ ์ถ”์ถœํ•  ์ˆ˜ ์žˆ์Œ์„ ๋ณด์˜€๋‹ค. ์‹คํ—˜ ๊ฒฐ๊ณผ ์ œ์•ˆ๋œ ๋ฐฉ๋ฒ•์ด ๊ธฐ์กด ์‹ฌ๋ฐ•์ˆ˜ ๋ณ€๋™์„ฑ ๋งค๊ฐœ๋ณ€์ˆ˜์™€ spectrogram ์ถ”์ถœ ๊ธฐ๋ฒ• ๊ธฐ๋ฐ˜์˜ ํŒจํ„ด ์ธ์‹ ๋ฐฉ๋ฒ•๋ณด๋‹ค ์ข‹์€ ์„ฑ๋Šฅ์„ ๋‚˜ํƒ€๋‚ด๊ณ  ์žˆ์Œ์„ ํ™•์ธํ•  ์ˆ˜ ์žˆ์—ˆ๋‹ค. ๋‘ ๋ฒˆ์งธ ์ œ์•ˆ๋œ ๋ฐฉ๋ฒ•๋ก ์€ ๋น„ ์ฃผ๊ธฐ์ ์ด๋ฉฐ ๋น„์ •์ƒ, ๋น„์„ ํ˜• ๊ทธ๋ฆฌ๊ณ  ์žก์Œ ํŠน์„ฑ์„ ์ง€๋‹Œ ์‹ ํ˜ธ์˜ ํŒจํ„ด์ธ์‹์„ ์œ„ํ•œ ์ตœ์  ์ข…๋‹จ ์‹ฌ์ธต ํ•™์Šต๋ง ์ž๋™ ์„ค๊ณ„ ๋ฐฉ๋ฒ•๋ก ์ด๋‹ค. ๋‡ŒํŒŒ ์‹ ํ˜ธ (Electroencephalogram, EEG)๋Š” ์ค‘์ถ” ์‹ ๊ฒฝ๊ณ„ (CNS)์—์„œ ๋ฐœ์ƒ๋˜์–ด ๋ฌด์˜์‹ ์ƒํƒœ์—์„œ๋„ ๋ณธ์—ฐ์˜ ๊ฐ์ • ์ƒํƒœ๋ฅผ ๋‚˜ํƒ€๋‚ด๋Š”๋ฐ, EEG ์‹ ํ˜ธ์˜ ๋‚ฎ์€ ์‹ ํ˜ธ ๋Œ€ ์žก์Œ๋น„ (SNR)๋กœ ์ธํ•ด ๋‡ŒํŒŒ๋ฅผ ์ด์šฉํ•œ ๊ฐ์ • ์ƒํƒœ ํŒ์ •์„ ์œ„ํ•ด์„œ ์ฃผ๋กœ ์ฃผํŒŒ์ˆ˜ ์˜์—ญ์˜ ์ŠคํŽ™ํŠธ๋Ÿผ ๋ถ„์„์ด ๋‡ŒํŒŒ ์—ฐ๊ตฌ์— ์ ์šฉ๋˜์–ด ์™”๋‹ค. ํ†ต์ƒ์ ์œผ๋กœ ๋‡ŒํŒŒ ์‹ ํ˜ธ๋Š” ํ‘ธ๋ฆฌ์— (Fourier) ๋˜๋Š” ์›จ์ด๋ธ”๋ › (wavelet) ๋ถ„์„์„ ์‚ฌ์šฉํ•˜์—ฌ ์—ฌ๋Ÿฌ ์ฃผํŒŒ์ˆ˜ ๋Œ€์—ญ์œผ๋กœ ํ•„ํ„ฐ๋ง ๋œ๋‹ค. ์ด๋ ‡๊ฒŒ ์ถ”์ถœ๋œ ์ฃผํŒŒ์ˆ˜ ํŠน์ง• ๋ฒกํ„ฐ๋Š” ๋ณดํ†ต ์–•์€ ํ•™์Šต ๋ถ„๋ฅ˜๊ธฐ (shallow machine learning classifier)์˜ ์ž…๋ ฅ์œผ๋กœ ์‚ฌ์šฉ๋˜์–ด ํŒจํ„ด ์ธ์‹์„ ์ˆ˜ํ–‰ํ•˜๊ฒŒ ๋œ๋‹ค. ๋ณธ ๋…ผ๋ฌธ์—์„œ๋Š” ์ด๋Ÿฌํ•œ ๊ธฐ๋ณธ์ ์ธ ํŠน์ง• ๋ฒกํ„ฐ ์ถ”์ถœ ๊ณผ์ •์ด ์—†๋Š” ๋ฒ ์ด์ง€์•ˆ ์ตœ์ ํ™” (Bayesian optimization) ๊ธฐ๋ฒ•์„ ์ด์šฉํ•œ ์ข…๋‹จ ์‹ฌ์ธต ํ•™์Šต๋ง ์ž๋™ ์„ค๊ณ„ ๊ธฐ๋ฒ•์„ ์ œ์•ˆํ•œ๋‹ค. ๋ฒ ์ด์ง€์•ˆ ์ตœ์ ํ™” ๊ธฐ๋ฒ•์€ ์ดˆ ๋งค๊ฐœ๋ณ€์ˆ˜ (hyperparamters)๋ฅผ ์ตœ์ ํ™”ํ•˜๊ธฐ ์œ„ํ•œ ๊ธฐ๊ณ„ ํ•™์Šต ๋ถ„์•ผ์˜ ๋Œ€ํ‘œ์ ์ธ ์ตœ์ ํ™” ๊ธฐ๋ฒ•์ธ๋ฐ, ์ตœ์ ํ™” ๊ณผ์ •์—์„œ ํ‰๊ฐ€ ์‹œ๊ฐ„์ด ๋งŽ์ด ์†Œ์š”๋˜๋Š” ๋ชฉ์  ํ•จ์ˆ˜ (expensive black box function)๋ฅผ ๊ฐ–๊ณ  ์žˆ๋Š” ์ตœ์ ํ™” ๋ฌธ์ œ์— ์ ํ•ฉํ•˜๋‹ค. ์ด๋Ÿฌํ•œ ๋ฒ ์ด์ง€์•ˆ ์ตœ์ ํ™”๋ฅผ ์ด์šฉํ•˜์—ฌ ๊ธฐ๋ณธ์ ์ธ ํ•™์Šต ๋ชจ๋ธ์ธ 1D CNNs ๋ฐ RNNs์˜ ์ „์ฒด ๋ชจ๋ธ์˜ ์ดˆ ๋งค๊ฐœ๋ณ€์ˆ˜ ๋ฐ ๊ตฌ์กฐ์  ์ตœ์ ํ™”๋ฅผ ์ˆ˜ํ–‰ํ•˜๋Š” ๋ฐฉ๋ฒ•์„ ์ œ์•ˆํ•˜์˜€์œผ๋ฉฐ, ์ œ์•ˆ๋œ ๋ฐฉ๋ฒ•๋ก ์„ ๋ฐ”ํƒ•์œผ๋กœ Deep EEGNet์ด๋ผ๋Š” ์ธ๊ฐ„์˜ ๊ฐ์ •์ƒํƒœ๋ฅผ ํŒ๋ณ„ํ•  ์ˆ˜ ์žˆ๋Š” ๋ชจ๋ธ์„ ์ œ์•ˆํ•˜์˜€๋‹ค. ์—ฌ๋Ÿฌ ์‹คํ—˜์„ ํ†ตํ•ด ์ œ์•ˆ๋œ ๋ชจ๋ธ์ด ๊ธฐ์กด์˜ ์ฃผํŒŒ์ˆ˜ ํŠน์ง• ๋ฒกํ„ฐ (band power feature) ์ถ”์ถœ ๊ธฐ๋ฒ• ๊ธฐ๋ฐ˜์˜ ์ „ํ†ต์ ์ธ ๊ฐ์ • ํŒจํ„ด ์ธ์‹ ๋ฐฉ๋ฒ•๋ณด๋‹ค ์ข‹์€ ์„ฑ๋Šฅ์„ ๋‚˜ํƒ€๋‚ด๊ณ  ์žˆ์Œ์„ ํ™•์ธํ•  ์ˆ˜ ์žˆ์—ˆ๋‹ค. ๊ฒฐ๋ก ์ ์œผ๋กœ ๋ณธ ๋…ผ๋ฌธ์€ ์‹œ๊ณ„์—ด ๋ฐ์ดํ„ฐ๋ฅผ ์ด์šฉํ•œ ํŒจํ„ด ์ธ์‹๋ฌธ์ œ๋ฅผ ์—ฌ๋Ÿฌ ํŠน์ง• ๋ฒกํ„ฐ ์ถ”์ถœ ๊ธฐ๋ฒ• ๊ธฐ๋ฐ˜์˜ ์ „ํ†ต์ ์ธ ๋ฐฉ๋ฒ•์„ ํ†ตํ•ด ์„ค๊ณ„ํ•˜๋Š” ๋ฐฉ๋ฒ•๋ถ€ํ„ฐ, ์ถ”๊ฐ€์ ์ธ ํŠน์ง• ๋ฒกํ„ฐ ์ถ”์ถœ ๊ณผ์ • ์—†์ด ์›๋ณธ ๋ฐ์ดํ„ฐ๋งŒ์„ ์ด์šฉํ•˜์—ฌ ์ข…๋‹จ ์‹ฌ์ธต ํ•™์Šต๋ง์„ ์„ค๊ณ„ํ•˜๋Š” ๋ฐฉ๋ฒ•๊นŒ์ง€ ์ œ์•ˆํ•˜์˜€๋‹ค. ๋˜ํ•œ, ๋‹ค์–‘ํ•œ ์‹คํ—˜์„ ํ†ตํ•ด ์ œ์•ˆ๋œ ๋ฐฉ๋ฒ•๋ก ์ด ์‹œ๊ณ„์—ด ์‹ ํ˜ธ ๋ฐ์ดํ„ฐ๋ฅผ ์ด์šฉํ•œ ํŒจํ„ด ์ธ์‹ ๋ฌธ์ œ์— ํšจ๊ณผ์ ์œผ๋กœ ์ ์šฉ๋  ์ˆ˜ ์žˆ์Œ์„ ๋ณด์˜€๋‹ค.Chapter 1 Introduction 1 1.1 Pattern Recognition in Time Series 1 1.2 Major Problems in Conventional Approaches 7 1.3 The Proposed Approach and its Contribution 8 1.4 Thesis Organization 10 Chapter 2 Related Works 12 2.1 Pattern Recognition in Time Series using Conventional Methods 12 2.1.1 Time Domain Features 12 2.1.2 Frequency Domain Features 14 2.1.3 Signal Processing based on Multi-variate Empirical Mode Decomposition (MEMD) 15 2.1.4 Statistical Time Series Model (ARIMA) 18 2.2 Fundamental Deep Learning Algorithms 20 2.2.1 Convolutional Neural Networks (CNNs) 20 2.2.2 Recurrent Neural Networks (RNNs) 22 2.3 Hyper Parameters and Structural Optimization Techniques 24 2.3.1 Grid and Random Search Algorithms 24 2.3.2 Bayesian Optimization 25 2.3.3 Neural Architecture Search 28 2.4 Research Trends related to Time Series Data 29 2.4.1 Generative Model of Raw Audio Waveform 30 Chapter 3 Preliminary Researches: Patten Recognition in Time Series using Various Feature Extraction Methods 31 3.1 Conventional Methods using Time and Frequency Features: Motor Imagery Brain Response Classification 31 3.1.1 Introduction 31 3.1.2 Methods 32 3.1.3 Ensemble Classification Method (Stacking & AdaBoost) 32 3.1.4 Sensitivity Analysis 33 3.1.5 Classification Results 36 3.2 Statistical Feature Extraction Methods: ARIMA Model Based Feature Extraction Methodology 38 3.2.1 Introduction 38 3.2.2 ARIMA Model 38 3.2.3 Signal Processing 39 3.2.4 ARIMA Model Conformance Test 40 3.2.5 Experimental Results 40 3.2.6 Summary 43 3.3 Application on Specific Time Series Data: Human Stress States Recognition using Ultra-Short-Term ECG Spectral Feature 44 3.3.1 Introduction 44 3.3.2 Experiments 45 3.3.3 Classification Methods 49 3.3.4 Experimental Results 49 3.3.5 Summary 56 Chapter 4 Master Framework for Pattern Recognition in Time Series 57 4.1 The Concept of the Proposed Framework for Pattern Recognition in Time Series 57 4.1.1 Optimal Basic Deep Learning Models for the Proposed Framework 57 4.2 Two Categories for Pattern Recognition in Time Series Data 59 4.2.1 The Proposed Deep Learning Framework for Periodic Time Series Signals 59 4.2.2 The Proposed Deep Learning Framework for Non-periodic Time Series Signals 61 4.3 Expanded Models of the Proposed Master Framework for Pattern Recogntion in Time Series 63 Chapter 5 Deep Learning Model Design Methodology for Periodic Signals using Prior Knowledge: Deep ECGNet 65 5.1 Introduction 65 5.2 Materials and Methods 67 5.2.1 Subjects and Data Acquisition 67 5.2.2 Conventional ECG Analysis Methods 72 5.2.3 The Initial Setup of the Deep Learning Architecture 75 5.2.4 The Deep ECGNet 78 5.3 Experimental Results 83 5.4 Summary 98 Chapter 6 Deep Learning Model Design Methodology for Non-periodic Time Series Signals using Optimization Techniques: Deep EEGNet 100 6.1 Introduction 100 6.2 Materials and Methods 104 6.2.1 Subjects and Data Acquisition 104 6.2.2 Conventional EEG Analysis Methods 106 6.2.3 Basic Deep Learning Units and Optimization Technique 108 6.2.4 Optimization for Deep EEGNet 109 6.2.5 Deep EEGNet Architectures using the EEG Channel Grouping Scheme 111 6.3 Experimental Results 113 6.4 Summary 124 Chapter 7 Concluding Remarks 126 7.1 Summary of Thesis and Contributions 126 7.2 Limitations of the Proposed Methods 128 7.3 Suggestions for Future Works 129 Bibliography 131 ์ดˆ ๋ก 139Docto

    Socio-Cognitive and Affective Computing

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    Social cognition focuses on how people process, store, and apply information about other people and social situations. It focuses on the role that cognitive processes play in social interactions. On the other hand, the term cognitive computing is generally used to refer to new hardware and/or software that mimics the functioning of the human brain and helps to improve human decision-making. In this sense, it is a type of computing with the goal of discovering more accurate models of how the human brain/mind senses, reasons, and responds to stimuli. Socio-Cognitive Computing should be understood as a set of theoretical interdisciplinary frameworks, methodologies, methods and hardware/software tools to model how the human brain mediates social interactions. In addition, Affective Computing is the study and development of systems and devices that can recognize, interpret, process, and simulate human affects, a fundamental aspect of socio-cognitive neuroscience. It is an interdisciplinary field spanning computer science, electrical engineering, psychology, and cognitive science. Physiological Computing is a category of technology in which electrophysiological data recorded directly from human activity are used to interface with a computing device. This technology becomes even more relevant when computing can be integrated pervasively in everyday life environments. Thus, Socio-Cognitive and Affective Computing systems should be able to adapt their behavior according to the Physiological Computing paradigm. This book integrates proposals from researchers who use signals from the brain and/or body to infer people's intentions and psychological state in smart computing systems. The design of this kind of systems combines knowledge and methods of ubiquitous and pervasive computing, as well as physiological data measurement and processing, with those of socio-cognitive and affective computing

    Two Project on Information Systems Capabilities and Organizational Performance

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    Information systems (IS), as a multi-disciplinary research area, emphasizes the complementary relationship between people, organizations, and technology and has evolved dramatically over the years. IS and the underlying Information Technology (IT) application and research play a crucial role in transforming the business world and research within the management domain. Consistent with this evolution and transformation, I develop a two-project dissertation on Information systems capabilities and organizational outcomes. Project 1 examines the role of hospital operational effectiveness on the link between information systems capabilities and hospital performance. This project examines the cross-lagged effects on a sample of 217 hospitals measured over three years, to ascertain the effect of Hospital IS capability variants on Hospital performance in terms of quality of care and profitability, as mediated by hospital operational effectiveness. Hospital operational effectiveness was studied as process efficiency and service efficiency. The results of our study provide evidence for a considerable causal impact of hospital IS capabilities on hospital performance as mediated by hospital operational effectiveness. Project 2 investigates the impact of CEOโ€™s communication styles on organizational performance using text-mining approach on CEOs tweets from social media. The contribution of our study is three-folded: 1) From a methodological standpoint, we present a model to establish a relationship between CEO communication styles on social media and firm performance. Additionally, we apply text mining to identify communication styles of CEOs. 2) From a performance management, we evaluate organizational performance in three types: Operational, Financial, and Reputational. 3) From a management practice and policy perspective, our study results will help organizations evaluate the CEO candidates from a communication style standpoint

    Emotion and Stress Recognition Related Sensors and Machine Learning Technologies

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    This book includes impactful chapters which present scientific concepts, frameworks, architectures and ideas on sensing technologies and machine learning techniques. These are relevant in tackling the following challenges: (i) the field readiness and use of intrusive sensor systems and devices for capturing biosignals, including EEG sensor systems, ECG sensor systems and electrodermal activity sensor systems; (ii) the quality assessment and management of sensor data; (iii) data preprocessing, noise filtering and calibration concepts for biosignals; (iv) the field readiness and use of nonintrusive sensor technologies, including visual sensors, acoustic sensors, vibration sensors and piezoelectric sensors; (v) emotion recognition using mobile phones and smartwatches; (vi) body area sensor networks for emotion and stress studies; (vii) the use of experimental datasets in emotion recognition, including dataset generation principles and concepts, quality insurance and emotion elicitation material and concepts; (viii) machine learning techniques for robust emotion recognition, including graphical models, neural network methods, deep learning methods, statistical learning and multivariate empirical mode decomposition; (ix) subject-independent emotion and stress recognition concepts and systems, including facial expression-based systems, speech-based systems, EEG-based systems, ECG-based systems, electrodermal activity-based systems, multimodal recognition systems and sensor fusion concepts and (x) emotion and stress estimation and forecasting from a nonlinear dynamical system perspective

    Quality data assessment and improvement in pre-processing pipeline to minimize impact of spurious signals in functional magnetic imaging (fMRI)

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    In the recent years, the field of quality data assessment and signal denoising in functional magnetic resonance imaging (fMRI) is rapidly evolving and the identification and reduction of spurious signal with pre-processing pipeline is one of the most discussed topic. In particular, subject motion or physiological signals, such as respiratory or/and cardiac pulsatility, were showed to introduce false-positive activations in subsequent statistical analyses. Different measures for the evaluation of the impact of motion related artefacts, such as frame-wise displacement and root mean square of movement parameters, and the reduction of these artefacts with different approaches, such as linear regression of nuisance signals and scrubbing or censoring procedure, were introduced. However, we identify two main drawbacks: i) the different measures used for the evaluation of motion artefacts were based on user-dependent thresholds, and ii) each study described and applied their own pre-processing pipeline. Few studies analysed the effect of these different pipelines on subsequent analyses methods in task-based fMRI.The first aim of the study is to obtain a tool for motion fMRI data assessment, based on auto-calibrated procedures, to detect outlier subjects and outliers volumes, targeted on each investigated sample to ensure homogeneity of data for motion. The second aim is to compare the impact of different pre-processing pipelines on task-based fMRI using GLM based on recent advances in resting state fMRI preprocessing pipelines. Different output measures based on signal variability and task strength were used for the assessment

    Biopsychosocial Data Analytics and Modeling

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    Sustained customisation of digital health intervention (DHI) programs, in the context of community health engagement, requires strong integration of multi-sourced interdisciplinary biopsychosocial health data. The biopsychosocial model is built upon the idea that biological, psychological and social processes are integrally and interactively involved in physical health and illness. One of the longstanding challenges of dealing with healthcare data is the wide variety of data generated from different sources and the increasing need to learn actionable insights that drive performance improvement. The growth of information and communication technology has led to the increased use of DHI programs. These programs use an observational methodology that helps researchers to study the everyday behaviour of participants during the course of the program by analysing data generated from digital tools such as wearables, online surveys and ecological momentary assessment (EMA). Combined with data reported from biological and psychological tests, this provides rich and unique biopsychosocial data. There is a strong need to review and apply novel approaches to combining biopsychosocial data from a methodological perspective. Although some studies have used data analytics in research on clinical trial data generated from digital interventions, data analytics on biopsychosocial data generated from DHI programs is limited. The study in this thesis develops and implements innovative approaches for analysing the existing unique and rich biopsychosocial data generated from the wellness study, a DHI program conducted by the School of Science, Psychology and Sport at Federation University. The characteristics of variety, value and veracity that usually describe big data are also relevant to the biopsychosocial data handled in this thesis. These historical, retrospective real-life biopsychosocial data provide fertile ground for research through the use of data analytics to discover patterns hidden in the data and to obtain new knowledge. This thesis presents the studies carried out on three aspects of biopsychosocial research. First, we present the salient traits of the three components - biological, psychological and social - of biopsychosocial research. Next, we investigate the challenges of pre-processing biopsychosocial data, placing special emphasis on the time-series data generated from wearable sensor devices. Finally, we present the application of statistical and machine learning (ML) tools to integrate variables from the biopsychosocial disciplines to build a predictive model. The first chapter presents the salient features of the biopsychosocial data for each discipline. The second chapter presents the challenges of pre-processing biopsychosocial data, focusing on the time-series data generated from wearable sensor devices. The third chapter uses statistical and ML tools to integrate variables from the biopsychosocial disciplines to build a predictive model. Among its other important analyses and results, the key contributions of the research described in this thesis include the following: 1. using gamma distribution to model neurocognitive reaction time data that presents interesting properties (skewness and kurtosis for the data distribution) 2. using novel โ€˜peak heart-rateโ€™ count metric to quantify โ€˜biologicalโ€™ stress 3. using the ML approach to evaluate DHIs 4. using a recurrent neural network (RNN) and long short-term memory (LSTM) data prediction model to predict Difficulties in Emotion Regulation Scale (DERS) and primary emotion (PE) using wearable sensor data.Doctor of Philosoph
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