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Ayse Selin Cakmak
Ayse Selin Cakmak
Apple
Verified email at gatech.edu
Title
Cited by
Cited by
Year
Transfer learning from ECG to PPG for improved sleep staging from wrist-worn wearables
Q Li, Q Li, AS Cakmak, G Da Poian, DL Bliwise, V Vaccarino, AJ Shah, ...
Physiological measurement 42 (4), 044004, 2021
342021
Classification and prediction of post-trauma outcomes related to PTSD using circadian rhythm changes measured via wrist-worn research watch in a large longitudinal cohort
AS Cakmak, EAP Alday, G Da Poian, AB Rad, TJ Metzler, TC Neylan, ...
IEEE journal of biomedical and health informatics 25 (8), 2866-2876, 2021
212021
Addressing class imbalance in classification problems of noisy signals by using fourier transform surrogates
JTC Schwabedal, JC Snyder, A Cakmak, S Nemati, GD Clifford
arXiv preprint arXiv:1806.08675, 2018
182018
An unbiased, efficient sleep–wake detection algorithm for a population with sleep disorders: change point decoder
AS Cakmak, G Da Poian, A Willats, A Haffar, R Abdulbaki, YA Ko, ...
Sleep 43 (8), zsaa011, 2020
122020
Utility of wrist-wearable data for assessing pain, sleep, and anxiety outcomes after traumatic stress exposure
LD Straus, X An, Y Ji, SA McLean, TC Neylan, AS Cakmak, A Richards, ...
JAMA psychiatry 80 (3), 220-229, 2023
112023
Use of a wearable device to assess sleep and motor function in Duchenne muscular dystrophy
BI Siegel, A Cakmak, E Reinertsen, M Benoit, J Figueroa, GD Clifford, ...
Muscle & nerve 61 (2), 198-204, 2020
112020
Personalized heart failure severity estimates using passive smartphone data
AS Cakmak, E Reinertsen, HA Taylor, AJ Shah, GD Clifford
2018 IEEE International Conference on Big Data (Big Data), 1569-1574, 2018
102018
Using convolutional variational autoencoders to predict post-trauma health outcomes from actigraphy data
AS Cakmak, N Thigpen, G Honke, EP Alday, AB Rad, R Adaimi, ...
arXiv preprint arXiv:2011.07406, 2020
42020
Passive smartphone actigraphy data predicts heart failure decompensation
AS Cakmak, HJ Lanier, E Reinertsen, A Harzand, AM Zafari, ...
Circulation 140 (Suppl_1), A15444-A15444, 2019
32019
Obstructive Sleep Apnea Classification in a Mixed-Disorder Elderly Male Population Using a Low-Cost Off-Body Movement Sensor
PB Suresha, AS Cakmak, G Da Poian, AJ Shah, V Vaccarino, D Bliwise, ...
2019 IEEE EMBS International Conference on Biomedical & Health Informatics …, 2019
32019
Passive data collection and use of machine-learning models for event prediction
G Clifford, A Cakmak, A Shah, E Reinertsen
US Patent App. 17/295,248, 2021
12021
Late fusion of machine learning models using passively captured interpersonal social interactions and motion from smartphones predicts decompensation in heart failure
AS Cakmak, S Densen, G Najarro, P Rout, CJ Rozell, OT Inan, AJ Shah, ...
arXiv preprint arXiv:2104.01511, 2021
12021
Systems and Methods for Detecting Sleep Activity
G Clifford, A Cakmak, C Rozell, A Willats
US Patent App. 17/640,405, 2022
2022
Passively Captured Interpersonal Social Interactions and Motion From Smartphones for Predicting Decompensation in Heart Failure: Observational Cohort Study
AS Cakmak, EAP Alday, S Densen, G Najarro, P Rout, CJ Rozell, OT Inan, ...
JMIR Formative Research 6 (8), e36972, 2022
2022
Twenty-four hour activity patterns, pain, and mental health trajectories after a traumatic event.
L Straus, X An, A Cakmak, G Clifford, T Neylan, S McLean
2022
System and methods for tracking behavior and detecting abnormalities
G Clifford, J Zelko, N Shu, P Suresha, A Cakmak
US Patent App. 17/430,414, 2022
2022
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