OBJECTIVE: Heart rate variability (HRV) characterizes changes in autonomic nervous system function and varies with posttraumatic stress disorder (PTSD). In this study we developed a classifier based on heart rate (HR) and HRV measures, and improved classifier performance using a novel HR-based window segmentation. APPROACH: Single-channel ECG data were collected from 23 subjects with current PTSD, and 25 control subjects with no history of PTSD over 24 h. RR intervals were derived from these data, cleaned, and used to calculate HR and HRV metrics. These metrics were used as features in a logistic regression classifier. Performance was assessed via repeated random sub-sampling validation. To reduce noise and activity-related effects, we calculated features from five non-overlapping ten-minute quiescent segments of RR intervals defined by lowest HR, as well as random ten-minute segments as a control. MAIN RESULTS: Using a combination of the four most predictive features derived from quiescent segments we achieved a median area under the receiver operating curve (AUC) of 0.86 on out-of-sample test set data. This was significantly higher than the AUC using 24 h of data (0.72) or random segments (0.67). SIGNIFICANCE: These results demonstrate our segmentation approach improves the classification of PTSD from HR and HRV measures, and suggest the potential for tracking PTSD illness severity via objective physiological monitoring. Future studies should prospectively evaluate if classifier output changes significantly with worsening or effective treatment of PTSD.
OBJECTIVE: Heart rate variability (HRV) characterizes changes in autonomic nervous system function and varies with posttraumatic stress disorder (PTSD). In this study we developed a classifier based on heart rate (HR) and HRV measures, and improved classifier performance using a novel HR-based window segmentation. APPROACH: Single-channel ECG data were collected from 23 subjects with current PTSD, and 25 control subjects with no history of PTSD over 24 h. RR intervals were derived from these data, cleaned, and used to calculate HR and HRV metrics. These metrics were used as features in a logistic regression classifier. Performance was assessed via repeated random sub-sampling validation. To reduce noise and activity-related effects, we calculated features from five non-overlapping ten-minute quiescent segments of RR intervals defined by lowest HR, as well as random ten-minute segments as a control. MAIN RESULTS: Using a combination of the four most predictive features derived from quiescent segments we achieved a median area under the receiver operating curve (AUC) of 0.86 on out-of-sample test set data. This was significantly higher than the AUC using 24 h of data (0.72) or random segments (0.67). SIGNIFICANCE: These results demonstrate our segmentation approach improves the classification of PTSD from HR and HRV measures, and suggest the potential for tracking PTSD illness severity via objective physiological monitoring. Future studies should prospectively evaluate if classifier output changes significantly with worsening or effective treatment of PTSD.
Authors: Isaac R Galatzer-Levy; Karen-Inge Karstoft; Alexander Statnikov; Arieh Y Shalev Journal: J Psychiatr Res Date: 2014-09-16 Impact factor: 4.791
Authors: Elie G Karam; Matthew J Friedman; Eric D Hill; Ronald C Kessler; Katie A McLaughlin; Maria Petukhova; Laura Sampson; Victoria Shahly; Matthias C Angermeyer; Evelyn J Bromet; Giovanni de Girolamo; Ron de Graaf; Koen Demyttenaere; Finola Ferry; Silvia E Florescu; Josep Maria Haro; Yanling He; Aimee N Karam; Norito Kawakami; Viviane Kovess-Masfety; María Elena Medina-Mora; Mark A Oakley Browne; José A Posada-Villa; Arieh Y Shalev; Dan J Stein; Maria Carmen Viana; Zahari Zarkov; Karestan C Koenen Journal: Depress Anxiety Date: 2013-08-27 Impact factor: 6.505
Authors: Ayse S Cakmak; Erick A Perez Alday; Giulia Da Poian; Ali Bahrami Rad; Thomas J Metzler; Thomas C Neylan; Stacey L House; Francesca L Beaudoin; Xinming An; Jennifer S Stevens; Donglin Zeng; Sarah D Linnstaedt; Tanja Jovanovic; Laura T Germine; Kenneth A Bollen; Scott L Rauch; Christopher A Lewandowski; Phyllis L Hendry; Sophia Sheikh; Alan B Storrow; Paul I Musey; John P Haran; Christopher W Jones; Brittany E Punches; Robert A Swor; Nina T Gentile; Meghan E McGrath; Mark J Seamon; Kamran Mohiuddin; Anna M Chang; Claire Pearson; Robert M Domeier; Steven E Bruce; Brian J O'Neil; Niels K Rathlev; Leon D Sanchez; Robert H Pietrzak; Jutta Joormann; Deanna M Barch; Diego A Pizzagalli; Steven E Harte; James M Elliott; Ronald C Kessler; Karestan C Koenen; Kerry J Ressler; Samuel A Mclean; Qiao Li; Gari D Clifford Journal: IEEE J Biomed Health Inform Date: 2021-08-06 Impact factor: 7.021
Authors: J Douglas Bremner; Matthew T Wittbrodt; Nil Z Gurel; MdMobashir H Shandhi; Asim H Gazi; Yunshen Jiao; Oleksiy M Levantsevych; Minxuan Huang; Joy Beckwith; Isaias Herring; Nancy Murrah; Emily G Driggers; Yi-An Ko; MhmtJamil L Alkhalaf; Majd Soudan; Lucy Shallenberger; Allison N Hankus; Jonathon A Nye; Jeanie Park; Anna Woodbury; Puja K Mehta; Mark H Rapaport; Viola Vaccarino; Amit J Shah; Bradley D Pearce; Omer T Inan Journal: J Affect Disord Rep Date: 2021-07-10
Authors: Robert O Cotes; Mina Boazak; Emily Griner; Zifan Jiang; Bona Kim; Whitney Bremer; Salman Seyedi; Ali Bahrami Rad; Gari D Clifford Journal: JMIR Res Protoc Date: 2022-07-13
Authors: J Douglas Bremner; Nil Z Gurel; Yunshen Jiao; Matthew T Wittbrodt; Oleksiy M Levantsevych; Minxuan Huang; Hewon Jung; MdMobashir H Shandhi; Joy Beckwith; Isaias Herring; Mark H Rapaport; Nancy Murrah; Emily Driggers; Yi-An Ko; MhmtJamil L Alkhalaf; Majd Soudan; Jiawei Song; Benson S Ku; Lucy Shallenberger; Allison N Hankus; Jonathon A Nye; Jeanie Park; Viola Vaccarino; Amit J Shah; Omer T Inan; Bradley D Pearce Journal: Brain Behav Immun Health Date: 2020-09-11