| Literature DB >> 30747718 |
Yulin Hswen1,2, Anuraag Gopaluni3, John S Brownstein2,4,5, Jared B Hawkins2,4.
Abstract
BACKGROUND: More than 3.5 million Americans live with autism spectrum disorder (ASD). Major challenges persist in diagnosing ASD as no medical test exists to diagnose this disorder. Digital phenotyping holds promise to guide in the clinical diagnoses and screening of ASD.Entities:
Keywords: Twitter; autism; digital data; emotion; infodemiology; mobile phone; obsessive-compulsive disorder; social media; textual analysis; tweets
Mesh:
Year: 2019 PMID: 30747718 PMCID: PMC6390184 DOI: 10.2196/12264
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
All terms related to fear, anxiety, and paranoia.
| Root keyword | All forms of keyword |
| fear | fear, feared, fearful, fearing, fears, scare, and scared |
| anxiety | anxieties, anxiety, anxious, and anxiousness |
| paranoia | paranoia, paranoiac, paranoiacs, and paranoid |
All terms related to obsessive-compulsive disorder–related keywords.
| Root keyword | All forms of keyword |
| obsess | obsessed, obsessing, obsession, obsessions, obsessive, obsessively |
| fixate | fixated, fixation, fixations |
| repeat | repeat, repeated, repeatedly, repeating, repeats, repetition, repetitions |
| routine | routinely, routines |
| freak | freaked, freaking, freakout, freakouts |
| clean | cleaned, cleaning |
| check | checking, checked, checks, recheck, rechecks, rechecked, rechecking |
| count | counted, counting, counts, recount, recounted, recounting, recounts |
| hoard | hoarded, hoarder, hoarders, hoards |
| wash | washed, washing, washes |
| worry | worried, worrying |
| excess | excessive, excessively, excessiveness |
| concern | concerned, concerning, concern |
The characteristics of Twitter users with autism spectrum disorder (ASD) and control users.
| Twitter user characteristics | Twitter users with ASD (n=152), mean (SD) | Control twitter users (n=182), mean (SD) | ||
| Mean overall tweets per user | 11,189 (23,019) | 13,146 (20,159) | –0.818 (303) | .41 |
| Mean retweets per user | 2237 (4886) | 4942 (9680) | –3.299 (277) | .001 |
| Mean original tweets per user | 8952 (20,663) | 8204 (12,369) | 0.391 (237) | .70 |
| Number of friends | 1460 (5422) | 1193 (5559) | 0.442 (324) | .66 |
| Number of followers | 1778 (5753) | 1891 (7752) | 0.153 (327) | .88 |
| Number of favorites | 15,556 (31,966) | 12,515 (19,978) | 1.018 (243) | .31 |
a2-tailed Welch’s t tests were used to compare the “mean of proportions” for each category.
Tweets containing emotion-related keywords among Twitter users with autism spectrum disorder (ASD) and control users.
| Emotion terms category | Twitter users with ASD (n=152), mean (SD) | Control twitter users (n=182), mean (SD) | ||
| fear | 3.105e-03 (2.822e-03) | 1.975e-03 (1.553e-03) | 4.410 (225) | <.001 |
| paranoid | 1.902e-04 (4.057e-04) | 8.120e-05 (1.993e-04) | 3.021 (211) | .003 |
| anxious | 1.914e-03 (4.275e-03) | 6.486e-04 (1.230e-03) | 3.529 (172) | .001 |
| Tweets with any of the 3 emotional categories’ terms | 5.154e-03 (5.760e-03) | 2.679e-03 (2.282e-03) | 4.981 (190) | <.001 |
a2-tailed Welch’s t tests were used to compare the “mean of proportions” for each category.
Figure 1Differences in emotions between autism spectrum disorder (ASD) and control users.
Tweets containing obsessive-compulsive disorder (OCD)–related keywords among Twitter users with autism spectrum disorder (ASD) and control users.
| OCD keyword category | Twitter users with ASD (n=152), mean (SD) | Control twitter users (n=182), mean (SD) | ||
| obsess | 5.826e-04 (9.807e-04) | 7.086e-04 (9.377e-04) | –1.193 (316) | .23 |
| fixate | 3.640e-05 (1.120e-04) | 1.226e-05 (6.404e-05) | 2.356 (230) | .02 |
| repeat | 8.711e-04 (1.381e-03) | 7.239e-04 (1.775e-03) | 0.852 (330) | .40 |
| routine | 1.027e-03 (7.171e-03) | 2.866e-04 (1.114e-03) | 1.260 (157) | .21 |
| freak | 7.584e-04 (1.066e-03) | 8.827e-04 (1.342e-03) | –0.943 (331) | .35 |
| clean | 1.068e-03 (1.534e-03) | 9.481e-04 (1.026e-03) | 0.821 (255) | .41 |
| check | 1.061e-02 (4.840e-02) | 6.944e-03 (1.982e-02) | 0.874 (193) | .38 |
| count | 1.427e-03 (1.471e-03) | 9.693e-04 (7.744e-04) | 3.457 (219) | .001 |
| hoard | 5.608e-05 (1.876e-04) | 4.938e-05 (2.616e-04) | 0.272 (325) | .79 |
| wash | 5.766e-04 (1.176e-03) | 5.986e-04 (8.416e-04) | –0.193 (267) | .85 |
| worry | 2.071e-03 (2.167e-03) | 1.878e-03 (1.454e-03) | 0.934 (256) | .35 |
| excessive | 1.152e-04 (2.728e-04) | 4.816e-05 (1.215e-04) | 2.807 (201) | .005 |
| concern | 9.260e-04 (1.322e-03) | 4.548e-04 (6.964e-04) | 3.959 (219) | <.001 |
| Tweets with any of the 13 categories’ terms | 1.997e-02 (4.940e-02) | 1.445e-02 (2.023e-02) | 1.292 (193) | .20 |
a2-tailed Welch’s t tests were used to compare the “mean of proportions” for each category.
Figure 2Differences in obsessive-compulsive disorder-related discussion between autism spectrum disorder (ASD) and control users.
Timing of users’ tweets between Twitter users with autism spectrum disorder (ASD) and control users.
| Time interval | Proportion of tweets (%) | |||
| Among twitter users with ASD | Among control twitter users | |||
| 00:00-05:59 | 13.1 | 13.8 | 351.9 ( | <.001 |
| 06:00-11:59 | 17.3 | 19.6 | 2952.9 ( | <.001 |
| 12:00-17:59 | 33.6 | 29.4 | 6713.7 ( | <.001 |
| 18:00-23:59 | 36.0 | 37.2 | 474.3 ( | <.001 |