BMC Infectious Diseases (Sep 2022)

Clinical clustering with prognostic implications in Japanese COVID-19 patients: report from Japan COVID-19 Task Force, a nation-wide consortium to investigate COVID-19 host genetics

  • Shiro Otake,
  • Shotaro Chubachi,
  • Ho Namkoong,
  • Kensuke Nakagawara,
  • Hiromu Tanaka,
  • Ho Lee,
  • Atsuho Morita,
  • Takahiro Fukushima,
  • Mayuko Watase,
  • Tatsuya Kusumoto,
  • Katsunori Masaki,
  • Hirofumi Kamata,
  • Makoto Ishii,
  • Naoki Hasegawa,
  • Norihiro Harada,
  • Tetsuya Ueda,
  • Soichiro Ueda,
  • Takashi Ishiguro,
  • Ken Arimura,
  • Fukuki Saito,
  • Takashi Yoshiyama,
  • Yasushi Nakano,
  • Yoshikazu Mutoh,
  • Yusuke Suzuki,
  • Koji Murakami,
  • Yukinori Okada,
  • Ryuji Koike,
  • Yuko Kitagawa,
  • Akinori Kimura,
  • Seiya Imoto,
  • Satoru Miyano,
  • Seishi Ogawa,
  • Takanori Kanai,
  • Koichi Fukunaga,
  • The Japan COVID-19 Task Force

DOI
https://doi.org/10.1186/s12879-022-07701-y
Journal volume & issue
Vol. 22, no. 1
pp. 1 – 12

Abstract

Read online

Abstract Background The clinical course of coronavirus disease (COVID-19) is diverse, and the usefulness of phenotyping in predicting the severity or prognosis of the disease has been demonstrated overseas. This study aimed to investigate clinically meaningful phenotypes in Japanese COVID-19 patients using cluster analysis. Methods From April 2020 to May 2021, data from inpatients aged ≥ 18 years diagnosed with COVID-19 and who agreed to participate in the study were collected. A total of 1322 Japanese patients were included. Hierarchical cluster analysis was performed using variables reported to be associated with COVID-19 severity or prognosis, namely, age, sex, obesity, smoking history, hypertension, diabetes mellitus, malignancy, chronic obstructive pulmonary disease, hyperuricemia, cardiovascular disease, chronic liver disease, and chronic kidney disease. Results Participants were divided into four clusters: Cluster 1, young healthy (n = 266, 20.1%); Cluster 2, middle-aged (n = 245, 18.5%); Cluster 3, middle-aged obese (n = 435, 32.9%); and Cluster 4, elderly (n = 376, 28.4%). In Clusters 3 and 4, sore throat, dysosmia, and dysgeusia tended to be less frequent, while shortness of breath was more frequent. Serum lactate dehydrogenase, ferritin, KL-6, d-dimer, and C-reactive protein levels tended to be higher in Clusters 3 and 4. Although Cluster 3 had a similar age as Cluster 2, it tended to have poorer outcomes. Both Clusters 3 and 4 tended to exhibit higher rates of oxygen supplementation, intensive care unit admission, and mechanical ventilation, but the mortality rate tended to be lower in Cluster 3. Conclusions We have successfully performed the first phenotyping of COVID-19 patients in Japan, which is clinically useful in predicting important outcomes, despite the simplicity of the cluster analysis method that does not use complex variables.

Keywords