| Literature DB >> 35113031 |
Ellen McGinnis1, Aisling O'Leary2, Reed Gurchiek2, William E Copeland1, Ryan McGinnis2.
Abstract
BACKGROUND: Panic attacks (PAs) are an impairing mental health problem that affects >11% of adults every year. PAs are episodic, and it is difficult to predict when or where they may occur; thus, they are challenging to study and treat.Entities:
Keywords: app; application; biofeedback; digital medicine; mHealth; mental health; mobile health; mobile phone; panic attack
Year: 2022 PMID: 35113031 PMCID: PMC8855306 DOI: 10.2196/32982
Source DB: PubMed Journal: JMIR Form Res ISSN: 2561-326X
Figure 1PanicMechanic mobile health app screens. The PanicMechanic mHealth app is available wherever and whenever a user experiences a PA (screen 1). It provides biofeedback through objective measurement of HR during the PA (screen 2) and allows users to capture their perceived anxiety throughout the PA and identify their behavioral and thought triggers (screens 3 and 4). These data are aggregated over time to allow users to track their progress and identify trends that may be helpful for preventing future PAs (screens 4 and 5).
Figure 2Example of panic attack case recorded with PanicMechanic. bpm: beats per minute; HR: heart rate. Data from a PA tracked by a PanicMechanic user are reported here. The app tracked HR (bpm) and anxiety ratings (on a scale of 0 to 10; low to high) during attacks (top). This attack lasted for approximately 5 minutes, during which time HR showed 3 distinct peaks and anxiety ratings generally decreased. The app also allowed users to identify lifestyle factors and triggers that may have contributed to the attack (bottom). Data were tracked over time and reported back to the user (Figure 1) to help them identify trends that may be helpful for preventing future PAs.
Figure 3Mean heart rate (HR) and anxiety level during panic attacks. bpm: beats per minute. This figure shows ensemble average HR (solid, left axis, N=50) and subjective anxiety rating (dashed, right axis, N=48) responses for the first PA measured by PanicMechanic users (top). Both time series are expressed relative to the first peak in the HR signal. Demeaned HR recordings (gray, bottom) used for computing the ensemble average (black, bottom) demonstrate the variety in HR trajectories observed.
Figure 4Frequencies of panic attack data. This figure shows participant-reported PA data including mean scores for potential lifestyle contributors that may impact the likelihood of experiencing a PA and the frequency of triggers identified as being responsible for inducing the PA. Lifestyle contributor responses were on a 5-point scale from a lot worse or less to a lot better or more compared with typical. Stress, diet, sleep quality, and exercise were all reported as slightly worse, whereas substance use was reported as slightly better immediately before the PA. Thoughts about health were the most common trigger followed by conflict, performance, and workload.
Pilot study participant demographics (N=18).
| Pilot study demographics | Values | ||||
|
| |||||
|
| Female | 13 (72) | |||
|
| Male | 3 (17) | |||
|
| Other | 2 (11) | |||
| Age (years), mean (SD)a | 24 (5) | ||||
|
| |||||
|
| White | 15 (83) | |||
|
| Asian American | 1 (6) | |||
|
| Other | 2 (11) | |||
|
| |||||
|
| Non-Hispanic | 16 (89) | |||
|
| Hispanic | 2 (11) | |||
|
| |||||
|
| Any diagnosis | 13 (72) | |||
|
|
| ||||
|
|
| Anxiety | 10 (56) | ||
|
|
| Depression | 7 (39) | ||
|
|
| OCDb | 3 (17) | ||
|
|
| PTSDc | 3 (17) | ||
|
|
| ADHDd | 2 (11) | ||
|
|
| Panic | 2 (11) | ||
|
|
| Eating disorder | 2 (11) | ||
|
|
| Bipolar disorder | 1 (6) | ||
|
|
| Adjustment disorder | 1 (6) | ||
|
|
| Personality disorder | 1 (6) | ||
|
| |||||
|
| Currently in therapy | 12 (67) | |||
|
| Ever in therapy | 17 (94) | |||
|
| Physician | 13 (72) | |||
|
| Emergency room or urgent care | 5 (28) | |||
|
| Prescribed medication | 10 (56) | |||
|
| Self-medicated (alcohol or drugs) | 5 (28) | |||
|
| Biofeedback | 0 (0) | |||
aRange: 19-35 years.
bOCD: obsessive compulsive disorder.
cPTSD: posttraumatic stress disorder.
dADHD: attention-deficit/hyperactivity disorder.
Figure 5Symptoms of panic attack among the participants. This figure shows that the most common PA symptom is racing HR, which was experienced by 100% (16/16) of participants and supports our choice to consider HR biofeedback for PAs. Shortness of breath was the next most common symptom, experienced by 83% (13/16) of participants. The number of responses range from 17 to 18 owing to some missing responses.
Pilot study content analysis (n=16).
| Qualitative category | Values, n (%) | Example testimonial 1 | Example testimonial 2 | |
|
| ||||
|
| Symptom pattern recognition (observing symptom patterns aided the understanding of body response) | 6 (38) | “Rather than freaking out and feeling like I was dying, I saw that my heart rate was just slightly elevated and fluctuating, and I knew that the attack was temporary and I could work through it.” | “I liked how it kept track of my heart rate because seeing it decrease was calming.” |
|
| Guided attention (the structure redirected attention) | 6 (38) | “Watching my heart rate during the panic attack helped me focus more on what was going on.” | “Seeing my pulse change was really helpful in giving me something to focus on to calm down during a panic attack.” |
|
| Accessibility (knowing it was accessible) | 3 (19) | “The app provides instant assistance with attacks, instead of waiting to get help.” | “The app was accessible from my pocket, easy to read, and easy to follow.” |
|
| Physiological validation (the personalized data objectively acknowledged the experience as a panic attack) | 3 (19) | “The app was most helpful in getting me to acknowledge experiences that I've had for a long time as real, manageable symptoms of a known disorder - rather than just terrifying feelings.” | “I found the information provided by the app regarding panic attacks to be calming and affirming.” |
|
| Affirmations (the words of encouragement) | 2 (13) | “The positive affirmations it gives you is helpful.” | “It helped encourage me through it and stay in tune with myself.” |
|
| Triggers (being asked to identify triggers) | 2 (13) | “Identifying the trigger and watching your body calm down as you calm down was helpful.” | “The app has many different triggers that we could choose from.” |
|
| ||||
|
| Forgot or unmotivated to use (remembering or being motivated to open the app owing to panic) | 8 (50) | “I often lacked the presence of mind or motivation to get my phone and start tracking it.” | “It is not my first instinct to use an app when I am having an attack.” |
|
| Technology difficulties (owing to glitch or user error) | 5 (31) | “Sometimes I felt like it wasn't recording my pulse right which I fixated on.” | “The app never gave me an average length of my panic attacks so it always said I had 0 min left.” |
|
| Symptom barrier (panic symptoms impacted app use once it was opened) | 4 (25) | “Physically shaking made it hard for me to keep my finger on long enough to read my heart rate.” | “I had trouble answering because I was freaking out.” |
|
| Not accessible (did not have access to phone) | 3 (19) | “I didn't end up having my phone with me during most of my panic attacks.” | “It's too inconvenient for me to use considering my panic attacks often happen while driving.” |
|
| Repetitive guidance (structure of app was repetitive) | 1 (6) | “Questions too repetitive, especially when tracking more than one attack a day.” | —a |
|
| ||||
|
| Yes | 9 (57) | “To monitor myself and keep myself in touch with my body and reality.” | “It was helpful so I would continue using it.” |
|
| ||||
|
| Yes | 15 (94) | “I would say yes because it made me feel more educated on my physical well-being.” | “Although it doesn't work for me [Forgot to Use], I definitely recognize the benefit of real time biofeedback, and I feel like this is a great option for people who struggle with anxiety and panic attacks.” |
aSecond testimonial is not available.