BMJ Health & Care Informatics (Oct 2024)

Detection of hypertension from pharyngeal images using deep learning algorithm in primary care settings in Japan

  • Takeo Nakayama,
  • Yusuke Tsugawa,
  • Hiroshi Yoshihara,
  • Memori Fukuda,
  • Sho Okiyama

DOI
https://doi.org/10.1136/bmjhci-2023-100824
Journal volume & issue
Vol. 31, no. 1

Abstract

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Background The early detection of hypertension using simple visual images in a way that does not require physical interaction or additional devices may improve quality of care in the era of telemedicine. Pharyngeal images include vascular morphological information and may therefore be useful for identifying hypertension.Objectives This study sought to develop a deep learning-based artificial intelligence algorithm for identifying hypertension from pharyngeal images.Methods We conducted a secondary analysis of data from a clinical trial, in which demographic information, vital signs and pharyngeal images were obtained from patients with influenza-like symptoms in multiple primary care clinics in Japan. A deep learning-based algorithm that included a multi-instance convolutional neural network was trained to detect hypertension from pharyngeal images and demographic information. The classification performance was measured by area under the receiver operating characteristic curve. Importance heatmaps of the convolutional neural network were also examined to interpret the algorithm.Results This study included 7710 patients from 64 clinics. The training dataset comprised 6171 patients from 51 clinics (460 positive cases), and the test dataset comprised 1539 patients from 13 clinics (130 positive cases). Our algorithm achieved an area under the receiver operating characteristic curve of 0.922 (95% CI, 0.904 to 0.940), significantly improving over the baseline prediction model incorporating only demographic information, which scored 0.887 (95% CI, 0.862 to 0.911). Our algorithm had consistent classification performance across all age and sex subgroups. Importance heatmaps revealed that the algorithm focused on the posterior pharyngeal wall area, where blood vessels are mainly located.Conclusions The results indicate that a deep learning-based algorithm can detect hypertension with high accuracy using pharyngeal images.