Undiagnosed malnutrition is a significant problem in high-income countries, which can reduce the quality of life of many individuals, particularly of older adults. Moreover, it can also inflate the costs of existing health care systems because of the many metabolic complications that it can cause. The current methods for assessing malnutrition can be cumbersome. A trained practitioner must be present to conduct an assessment, or patients must travel to facilities with specialized equipment to obtain their measurements. Therefore, digital health care is a possible way of closing this gap as it is rapidly gaining traction as a scalable means of improving efficiency in the health care system. It allows for the remote monitoring of nutritional status without requiring the physical presence of practitioners or the use of advanced medical equipment. As such, there is an increasing interest in expanding the range of digital applications to facilitate remote monitoring and management of health issues. In this study, we discuss the feasibility of a novel digital remote method for diagnosing malnutrition using facial morphometrics. Many malnutrition screening assessments include subjective assessments of the head and the face. Facial appearance is often used by clinicians as the first point of qualitative indication of health status. Hence, there may be merit in quantifying these subtle but observable changes using facial morphometrics. Modern advancements in artificial intelligence, data science, sensors, and computing technologies allow facial features to be accurately digitized, which could potentially allow these previously intuitive assessments to be quantified. This study aims to stimulate further discussion and discourse on how this emerging technology can be used to provide real-time access to nutritional status. The use of facial morphometrics extends the use of currently available technology and may provide a scalable, easily deployable solution for nutritional status to be monitored in real time. This will enable clinicians and dietitians to keep track of patients remotely and provide the necessary intervention measures as required, as well as providing health care institutions and policy makers with essential information that can be used to inform and enable targeted public health approaches within affected populations.
UNSTRUCTURED Undiagnosed malnutrition is a significant problem in developed countries that can reduce quality of life for many individuals, particularly in the elderly. Moreover, it can also inflate the costs of existing healthcare systems due to the many metabolic complications it can cause. Current methods of assessing malnutrition can be cumbersome. It is required for a trained practitioner to be present to conduct an assessment, or that patients travel to facilities with specialised equipment to obtain their measurements. Therefore, digital healthcare is a possible way of closing this gap as it is fast gaining traction as a scalable means of improving efficiency in the healthcare system. It allows for nutritional status to be monitored remotely without requiring the physical presence of practitioners or the use of advanced medical equipment. As such there is an increasing interest to expand the range of digital applications so as to facilitate remote monitoring and management of health issues. In this paper, we discuss the feasibility of a novel digital remote method of diagnosing malnutrition using of facial morphometrics. Many malnutrition screening assessments include a subjective assessment of the head and face. Facial appearance is often used by clinicians as the first point of qualitative indication of health status. Hence, there may be merit in quantifying these subtle, yet observable, changes through the use of facial morphometrics. Modern advancements in artificial intelligence, data science, sensors and computing technologies allow for facial features in the face to be accurately digitised, which could potentially allow these previously intuitive assessments to be quantified. This paper aims to stimulate further discussion and discourse on how this emerging technology can be used to provide real-time access to nutrition status. The use of facial morphometrics extends the use of currently available technology and may provide a scalable, easily deployable solution for nutrition status to be monitored in real-time. This will provide clinicians and dietitians the ability to keep track of patients remotely and provide the necessary intervention measures as required, as well as provide healthcare institutions and policy makers with essential information that can be utilised to inform and enable targeted public health approaches within affected populations.
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