| Literature DB >> 29610112 |
Isaac Chun-Hai Fung1, Ashley M Jackson1, Lindsay A Mullican1, Elizabeth B Blankenship1, Mary Elizabeth Goff1, Amy J Guinn2, Nitin Saroha3, Zion Tsz Ho Tse4.
Abstract
BACKGROUND: The Office of Advanced Molecular Detection (OAMD), Centers for Disease Control and Prevention (CDC), manages a Twitter profile (@CDC_AMD). To our knowledge, no prior study has analyzed a CDC Twitter handle's entire contents and all followers.Entities:
Keywords: communications media; health communication; social media
Year: 2018 PMID: 29610112 PMCID: PMC5902693 DOI: 10.2196/publichealth.8737
Source DB: PubMed Journal: JMIR Public Health Surveill ISSN: 2369-2960
Frequency of tweets by their content category.
| Content category | Original tweets by @CDC_AMD, n (%) | Retweets of other Twitter users’ tweets by @CDC_AMD, n (%) | All tweets posted by @CDC_AMD, n (%) |
| Tweets that refer to the CDCa AMDb website | 354 (51.9) | 6 (7) | 360 (46.9) |
| Tweets that refer to publications of CDC AMD scientists (usually their abstracts on PubMed) | 133 (19.5) | 2 (2) | 135 (17.6) |
| Training: announcement of webinars, every quarter, collaborated with APHLc | 26 (3.8) | 2 (2) | 28 (3.6) |
| Training: announcement of CDC Bioinformatics fellowship program, collaborated with APHL | 29 (4.3) | 4 (5) | 33 (4.3) |
| CDC AMD scientists’ activities, such as their visit to a state | 15 (2.2) | 3 (3) | 18 (2.3) |
| Miscellaneous: anything that does not belong to the aforementioned categories | 125 (18.3) | 69 (80) | 194 (25.3) |
| Total | 682 (100.0) | 86 (100) | 768 (100.0) |
aCDC: Centers for Disease Control and Prevention.
bAMD: advanced molecular detection.
cAPHL: Association of Public Health Laboratories.
Number of parameters, log-likelihood, and Akaike Information Criterion for the 5 models that we tested for the corpus of original tweets created by the @CDC_AMD Twitter profile.
| Model | A | B | C | D | E |
| Model choice | Poisson | Negative binomial | Negative binomial | Hurdlea | Hurdlea |
| Predictorsb | Media+Content | Media+Content | Media only | Media+Content | Media only |
| Number of parameters | 8 | 9 | 4 | 16 | 6 |
| Log-likelihood (dfc) | −1210.125 (df=7) | −1080.27 (df=8) | −1084.925 (df=3) | −1075.625 (df=15) | −1084.567 (df=5) |
| Akaike Information Criterion | 2434.25 | 2176.5 | 2175.9 | 2181.25 | 2179.133 |
aHurdle model (count=negative binomial; zero hurdle=logistic).
bMedia: attachment of a photo or a video (or a link to a photo or a video).
cdf: degrees of freedom.
Probability ratios for an original @CDC_AMD tweet being retweeted in a negative binomial regression model that includes both the variable for photo or video attachment and the content variable (Model B), and one without content variable (Model C); in a hurdle model that includes both the variable for photo or video attachment and the content variable (Model D) and one without the content variable (Model E).
| Explanatory variables of each model | Probability ratio (95% CI) | |||
| Contained a photo or video | 1.406 (1.114-1.775) | .004 | ||
| Referred to the CDCa AMDb website | Reference | - | ||
| Publication in content | 0.874 (0.638-1.197) | .40 | ||
| Webinar in content | 1.081 (0.643-1.832) | .77 | ||
| Bioinformatics in content | 1.381 (0.834-2.311) | .21 | ||
| Scientist in content | 1.066 (0.544-2.120) | .85 | ||
| Miscellaneous content | 1.355 (1.035-1.778) | .03 | ||
| Contained a photo or video | 1.374 (1.129-1.674) | .002 | ||
| Zero or positive (logistic): Contained a photo or video | 1.643 (1.137-2.374) | .008 | ||
| Referred to the CDC AMD website | Reference | - | ||
| Publication in content | 1.179 (0.740-1.878) | .49 | ||
| Webinar in content | 1.329 (0.579-3.046) | .50 | ||
| Bioinformatics in content | 2.260 (0.965-5.296) | .06 | ||
| Scientist in content | 1.685 (0.557-5.097) | .36 | ||
| Miscellaneous content | 1.150 (0.743-1.782) | .53 | ||
| Positive count (negative binomial): Contained a photo or video | 1.257 (0.917-1.724) | .16 | ||
| Referred to the CDC AMD website | Reference | - | ||
| Publication in content | 0.652 (0.417-1.022) | .06 | ||
| Webinar in content | 0.929 (0.463-1.867) | .84 | ||
| Bioinformatics in content | 0.999 (0.511-1.950) | >.99 | ||
| Scientist in content | 0.774 (0.314-1.907) | .58 | ||
| Miscellaneous content | 1.501 (1.046-2.153) | .03 | ||
| Zero or positive (logistic): Contained a photo or video | 1.442 (1.059-1.963) | .02 | ||
| Positive count (negative binomial): Contained a photo or video | 1.344 (1.021-1.770) | .04 | ||
aCDC: Centers for Disease Control and Prevention.
bAMD: advanced molecular detection.
cHurdle models include two model components: a logistic model and a negative binomial model.
Number of parameters, log-likelihood, and Akaike Information Criterion for the 2 models that we tested for the corpus of retweets created by the @CDC_AMD Twitter profile.
| Model | F | G |
| Model choice | Negative binomial | Negative binomial |
| Predictorsa | Media+Content | Media |
| Number of parameters | 9 | 4 |
| Log-likelihood | −309.15 | −313.27 |
| Akaike Information Criterion | 634.2917 | 632.5408 |
aMedia: with a photo or a video (or a link to a photo or a video).
Probability ratios for a tweet retweeted by @CDC_AMD being retweeted in a negative binomial regression model that includes both the variable for photo or video attachment and the content variable (Model F), and one without the content variable (Model G).
| Explanatory variables of each model | Probability ratio (95% CI) | |||
| Contained a photo or video | 0.703 (0.424-1.184) | .18 | ||
| Referred to the CDCa AMDb website | Reference | - | ||
| Publication in content | 3.121 (0.584-25.465) | .21 | ||
| Webinar in content | 0.882 (0.160-7.304) | .89 | ||
| Bioinformatics in content | 0.695 (0.170-3.136) | .62 | ||
| Scientist in content | 1.171 (0.269-6.313) | .84 | ||
| Miscellaneous content | 2.527 (0.890-6.022) | .053 | ||
| Contained a photo or video | 0.825 (0.508-1.369) | .44 | ||
aCDC: Centers for Disease Control and Prevention.
bAMD: advanced molecular detection.