| Literature DB >> 30291053 |
Yang Liu1, Qiaozhu Mei1,2, David A Hanauer1,3, Kai Zheng1,4, Joyce M Lee5,6.
Abstract
BACKGROUND: Use of social media is becoming ubiquitous, and disease-related communities are forming online, including communities of interest around diabetes.Entities:
Keywords: Twitter, DSMA; content analysis; diabetes community; social media; spatiotemporal analysis
Year: 2016 PMID: 30291053 PMCID: PMC6238851 DOI: 10.2196/diabetes.6256
Source DB: PubMed Journal: JMIR Diabetes ISSN: 2371-4379
Number and percentage of tweets by terms or hashtags and the number and percentage of users tweeting with those terms or hashtags.
| Term | Tweets | Users |
| Diabetes | 1,200,268 (87.7) | 748,001 (89.6) |
| #Diabetes | 165,868 (12.1) | 67,229 (8.1) |
| Insulin | 83,820 (6.1) | 59,728 (7.2) |
| Glucose | 60,033 (4.4) | 46,357 (5.6) |
| #Doc | 27,616 (2.0) | 16,457 (2.0) |
| #Dsma | 11,757 (0.9) | 1424 (0.2) |
| Blood glucose | 10,212 (0.7) | 6904 (0.8) |
| #T1d | 9040 (0.7) | 3835 (0.5) |
| #Dblog | 5711 (0.4) | 1132 (0.1) |
| Insulin pump | 5179 (0.4) | 4061 (0.5) |
| #Type1 | 3211 (0.2) | 1800 (0.2) |
| #Type2 | 2905 (0.2) | 1468 (0.2) |
| #Bgnow | 2470 (0.2) | 753 (0.1) |
| #Type1diabetes | 1812 (0.1) | 1248 (0.1) |
| #Bloodsugar | 1718 (0.1) | 1213 (0.1) |
| #Type2diabetes | 1388 (0.1) | 1035 (0.1) |
| #T2d | 935 (0.1) | 452 (0.1) |
| #Showmeyourpump | 932 (0.1) | 645 (0.1) |
| #Wearenotwaiting | 327 (<0.1) | 183 (<0.1) |
| #Diyps | 132 (<0.1) | 50 (<0.1) |
| #Cwd2014 | 7 (<0.1) | 7 (<0.1) |
Figure 1Timeline of tweet volume for all diabetes-related tweets.
Figure 2Timeline of tweet volume for tweets using the hashtag #dsma.
Figure 3The proportion of tweets by month across the 2-year period for all diabetes-related tweets.
Figure 4The proportion of tweets by month across the 2-year period for #dsma tweets.
Figure 5The proportion of tweets by day of the week across the 2-year period for all diabetes-related tweets.
Figure 6The proportion of tweets by day of the week across the 2-year period for #dsma tweets.
Frequency of the geotagged diabetes tweets in countries with more than 100 appearances.
| Country | Number of geotagged diabetes tweets |
| United States | 10,047 |
| Indonesia | 5355 |
| United Kingdom | 1897 |
| Venezuela | 1172 |
| Mexico | 1042 |
| Brazil | 816 |
| Malaysia | 611 |
| Canada | 590 |
| Philippines | 439 |
| Ghana | 350 |
| Spain | 325 |
| Nigeria | 299 |
| Argentina | 260 |
| Chile | 223 |
| India | 220 |
| Australia | 218 |
| Dominican Republic | 199 |
| Netherlands | 189 |
| South Africa | 185 |
| Colombia | 167 |
| Singapore | 147 |
| Ireland | 107 |
| Sweden | 105 |
Figure 7Visualization of diabetes-related tweets with geolocation information. Each blue dot represents one tweet.
Categories of individuals who tweeted with diabetes-related tweets and #dsma tweets.
| Users’ relationship to diabetes | Users who have posted diabetes-related tweets | Users who have posted #dsma tweets |
| Individual with type 1 diabetes | 2 (0.4) | 220 (52.9) |
| Individual with type 2 diabetes | 1 (0.2) | 26 (6.3) |
| Individual with diabetes (type not specified) | 4 (0.8) | 39 (9.4) |
| Caregiver/parent/guardian | 0 | 38 (9.1) |
| Spouse/significant other | 0 | 3 (0.7) |
| Friend | 0 | 1 (0.2) |
| Nurse | 2 (0.4) | 9 (2.2) |
| Physician | 3 (0.6) | 6 (1.4) |
| Diabetes educator | 0 | 11 (2.6) |
| Dietician | 2 (0.4) | 2 (0.5) |
| Researcher | 2 (0.4) | 4 (1.0) |
| Diabetes company | 1 (0.2) | 7 (1.7) |
| Diabetes company employee | 0 | 22 (5.3) |
| Health care organization | 12 (2.4) | 6 (1.4) |
| Other/unknown | 471 (94.2) | 65 (15.6) |