| Literature DB >> 32761211 |
Jijo Pulickiyil Ulahannan1, Nikhil Narayanan2, Nishad Thalhath3, Prem Prabhakaran4, Sreekanth Chaliyeduth5, Sooraj P Suresh6, Musfir Mohammed7, E Rajeevan8, Sindhu Joseph9, Akhil Balakrishnan10, Jeevan Uthaman11, Manoj Karingamadathil12, Sunil Thonikkuzhiyil Thomas13, Unnikrishnan Sureshkumar14, Shabeesh Balan15, Neetha Nanoth Vellichirammal16.
Abstract
OBJECTIVE: India reported its first coronavirus disease 2019 (COVID-19) case in the state of Kerala and an outbreak initiated subsequently. The Department of Health Services, Government of Kerala, initially released daily updates through daily textual bulletins for public awareness to control the spread of the disease. However, these unstructured data limit upstream applications, such as visualization, and analysis, thus demanding refinement to generate open and reusable datasets.Entities:
Keywords: COVID-19; India; Kerala; open data; visualization
Mesh:
Year: 2020 PMID: 32761211 PMCID: PMC7454688 DOI: 10.1093/jamia/ocaa203
Source DB: PubMed Journal: J Am Med Inform Assoc ISSN: 1067-5027 Impact factor: 4.497
Figure 1.Data model for the structured dataset.
Figure 2.Outline of data collection, curation, and quality control for generating the dataset and visualization.
Figure 3.Implementation of the Web application and workflow. CDN: content delivery network; JS: JavaScript.
Figure 4.Representative images of COVID-19 (coronavirus disease 2019) outbreak trend for Kerala as visualized from the sourced data. (A) Plot showing the number of confirmed, active, recovered, and deceased cases; and (B) the trend curve, plotted with daily cases and 7 days’ average. The dotted lines show the initiation of nationwide lockdown, and repatriation of Keralites from abroad and other states. (C) The hotspot map showing the districts and hotspot locations.
Demographic characteristics of the individuals affected with COVID-19 in Kerala, India, between January 30 and June 15, 2020
| All cases | Cases with travel history | Secondary transmission | Recovery | Death | Duration of illness (days) | |
|---|---|---|---|---|---|---|
| Population | 2543 (72.41) | 2153 (75.6) | 389 (53.5) | 1174 (64.5) | 20 (65.0) | 13 (2-45) |
| Age | ||||||
| <10 y | 89 (43.82) | 62 | 27 | 33 | 1 | 14 (5-32) |
| 10-19 y | 92 (54.34) | 64 | 28 | 47 | — | 12 (7-27) |
| 20-29 y | 555 (69.19) | 492 | 63 | 244 | 1 | 12 (4-42) |
| 30-39 y | 589 (78.78) | 501 | 88 | 277 | 1 | 13 (4-37) |
| 40-49 y | 467 (79.44) | 403 | 64 | 200 | 2 | 12 (3-44) |
| 50-59 y | 328 (76.83) | 279 | 49 | 132 | 2 | 13 (3-45) |
| 60-69 y | 162 (76.54) | 133 | 29 | 61 | 7 | 12 (5-35) |
| 70-79 y | 32 (50.0) | 24 | 8 | 12 | 5 | 18 (4-23) |
| >80 y | 18 (44.44) | 5 | 13 | 14 | 1 | 11 (4-41) |
| Unspecified | 211 (63.51) | 190 | 21 | 154 | — | 15 (2-38) |
| Age, y | 36 (0-93) | 36 (0-83) | 36 (0-93) | 35 (2-93) | 63.5 (0-87) | |
Values are n (% male) or median (range).
COVID: coronavirus disease 2019.