Abstract:
"Medical research has a major problem because of the genetic data's explosive increase, especially when it
comes to the early identification and identification of genetic illnesses. Facial images is one potentially
significant but underused source of data, as some genetic illnesses frequently produce distinctive and
recognizable facial traits. Traditional approaches of picture analysis, however, take a long time, demand a
high level of knowledge, and are subject to human mistake. Furthermore, a more effective and precise
technique is required due to the enormous number of genetic data. An automatic, accurate, and scalable
method to recognize facial phenotypic characteristics linked to genetic illnesses is urgently needed.
Created an advanced machine learning model to solve this issue utilizing deep convolutional neural networks
(CNNs), specifically the ResNet50 and VGGFace algorithms. Because they can extract intricate features from
simple pixel input, CNNs are particularly well-suited for image analysis. ResNet50 was used because of its
outstanding performance in picture classification tasks and because of its deep residual learning framework,
which helped to solve the disappearing gradient issue. This was paired with VGGFace, a model that had
already been trained and was renowned for being good at facial recognition tasks. A sizable collection of
facial photos with associated genetic abnormalities was used to train the model. The architecture was created
to employ the ResNet50 model to categorize the genetic condition after passing these focused images via the
VGGFace models to recognize and fix on the facial areas in the photos.
Accuracy, precision, recall, and F1 score are common data analysis metrics for classification tasks that were
used to assess the performance of our model. This was accomplished by using a different test dataset that the
model has never seen before during training. The model displayed good accuracy, showing a high percentage
of overall accurate predictions. A low percentage of false positives, which is crucial in a medical environment
to prevent needless treatment or discomfort, was also indicated by excellent precision. The model's capacity
to accurately identify the majority of cases of genetic illnesses was shown by the recall score, which was
equally outstanding. The F1 score, which balances precision and recall, supported our model's strong
performance. This cutting-edge method for identifying genetic disorders offers a promising course for
ongoing study and therapeutic applications."