Skip to main content
Top

Predicting Paediatric Brain Disorders from MRI Images Using Advanced Deep Learning Techniques

  • 01-04-2025
  • Comment
Published in:

Abstract

The problem at hand is the significant global health challenge posed by children’s diseases, where timely and accurate diagnosis is crucial for effective treatment and management. Conventional diagnosis techniques are typical, use tedious processes and generate inaccurate results since they are executed by human beings and cause delays in treatment that can be fatal. Considering these and other shortcomings there exists a need to have more efficient and accurate solutions based on artificial intelligence. Machine learning and more specifically, deep learning algorithms are of great help in analysing medical and clinical images to detect as well as classify diseases. In this paper, we propose a system for detecting various childhood diseases using a range of advanced Convolutional Neural Network models like EfficientNetB0, EfficientNetB3, Xception, InceptionV3, MobileNetV2, VGG19, DenseNet169, ResNet50V2, ResNet152V2, and the hybrid architecture InceptionResNetV2. These models are trained on MRI images of paediatric brain disorders to achieve high prediction accuracy. We use data visualization techniques such as segmentation and contour-based feature extraction to extract regions of interest before feeding the data into the models. The models are optimized using both ADAM and RMSprop optimizers. EfficientNetB0, when optimized with RMSprop, achieves an accuracy of 94.59%, a loss of 0.44, and an RMSE of 0.66. InceptionResNetV2, optimized with ADAM, achieves the highest accuracy of 97.59%, while EfficientNetB0 demonstrates the lowest loss (0.25) and RMSE (0.5). We also evaluate the models based on their precision, learning curves, recall, computational time, and F1 score, highlighting the effectiveness of AI-driven approaches for the diagnosis and management of children's diseases.
Title
Predicting Paediatric Brain Disorders from MRI Images Using Advanced Deep Learning Techniques
Authors
Yogesh Kumar
Priya Bhardwaj
Supriya Shrivastav
Kapil Mehta
Publication date
01-04-2025
Publisher
Springer US
Published in
Neuroinformatics / Issue 2/2025
Print ISSN: 1539-2791
Electronic ISSN: 1559-0089
DOI
https://doi.org/10.1007/s12021-024-09707-0
This content is only visible if you are logged in and have the appropriate permissions.

Keynote webinar | Spotlight on functional neurological disorder

FND perplexes and frustrates patients and physicians alike. Limited knowledge and insufficient awareness delays diagnosis and treatment, and many patients feel misunderstood and stigmatized. How can you recognize FND and what are the treatment options?

Prof. Mark Edwards
Watch now
Video

How can you integrate PET into your practice? (Link opens in a new window)

1.5 AMA PRA Category 1 Credit(s)™

PET imaging is playing an increasingly critical role in managing AD. Our expert-led program will empower you with practical strategies and real-world case studies to effectively integrate it into clinical practice.

This content is intended for healthcare professionals outside of the UK.

Supported by:
  • Lilly
Developed by: Springer Health+ IME
Learn more
Image Credits
Human brain illustration/© (M) CHRISTOPH BURGSTEDT / SCIENCE PHOTO LIBRARY / Getty Images, Navigating neuroimaging in Alzheimer’s care: Practical applications and strategies for integration/© Springer Health+ IME