—A woman's satisfaction with childbirth may have
immediate and long-term effects on her health as well as on the
relationship with her newborn child. The mode of baby delivery
is genuinely vital to a delivery patient and her infant child. It
might be a crucial factor for ensuring the safety of both the
mother and the child. During the baby delivery, decision-making
within a short time becomes very challenging for the physician.
Besides, humans may make wrong decisions selecting the
appropriate delivery mode of childbirth. A wrong decision
increases the mother's life risk and can also be harmful to the
newborn baby's health. Computer-aided decision-making can be
an excellent solution to this problem. Considering this scope, we
have built a supervised machine learning-based decision-making
model to predict the most suitable childbirth mode that will
reduce this risk. This work has applied 32 supervised classifier
algorithms and 11 training methods on the real childbirth dataset
from the Tarail Upazilla Health complex, Kishorganj,
Bangladesh. We have also analyzed the result and compared
them using various statistical parameters to determine the bestperformed model. The quadratic discriminant analysis has
shown the highest accuracy of 0.979992 with the F1 score of
0.979962. Using this model to decide the appropriate labor mode
may significantly reduce maternal and infant health risks.