MACHINE LEARNING IMPLEMENTATION IN PREDICTING STUNTING ON CHILDREN AGED 5 AND UNDER USING INDIAâS DEMOGRAPHIC AND HEALTH SURVEYS 2019-2021
Anthropometry is one of the important indicators for the health of infants and children during the early growth period, specifically under the age of 5 years. Stunting is a term used to describe the condition of the human body when growth is inhibited due to malnutrition, resulting in a child or...
Saved in:
Main Author: | |
---|---|
Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/75858 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Anthropometry is one of the important indicators for the health of infants and
children during the early growth period, specifically under the age of 5 years.
Stunting is a term used to describe the condition of the human body when growth is
inhibited due to malnutrition, resulting in a child or infant having a height below
the standard. Stunting, determined by a child's height with a standard deviation of
-2 SD from the height-for-age, can lead to difficulties in cognitive development,
susceptibility to diseases, lower social tendencies, and various morbidities up to
mortality. Based on the Indonesian Nutritional Status Survey, the prevalence of
stunting in Indonesia in 2021 was still at 24.4%, indicating a high rate of stunting
in the country. This shows that Indonesia needs to intervene and prevent stunting.
Stunting is fundamentally caused by various factors related to the child and is not
limited to the child's nutrition and anthropometry. In this regard, prevention efforts
against stunting can utilize artificial intelligence, particularly machine learning, to
process data and identify various stunting factors while creating a predictive model
of risk classes based on these factors.
In this research, data exploration was conducted using the Demographic and
Health Surveys from India due to the similarities and availability of data
in Indonesia. Data processing was done to adjust to the Indonesian context, and
it was found that the most influential features for training the predictive model
of stunting risk classes in children under 5 years old were maternal health,
health, intellectual, and anthropometric factors, family socioeconomics,
living environment, and child nutrition intake. Through the process of
training the predictive model, a K-Nearest Neighbour-based model was found to
be optimal in predicting the condition of stunting in children. Further
optimization was done by adjusting hyperparameters of the model, resulting in an
accuracy rate of 91.183%. The most optimal model was then implemented
through a simple website-based application using the Flask microframework. |
---|