Maintenance Notice

Due to necessary scheduled maintenance, the JMIR Publications website will be unavailable from Wednesday, July 01, 2020 at 8:00 PM to 10:00 PM EST. We apologize in advance for any inconvenience this may cause you.

Who will be affected?

Accepted for/Published in: JMIR Formative Research

Date Submitted: Nov 9, 2021
Open Peer Review Period: Nov 9, 2021 - Jan 4, 2022
Date Accepted: Apr 9, 2022
Date Submitted to PubMed: Apr 11, 2022
(closed for review but you can still tweet)

The final, peer-reviewed published version of this preprint can be found here:

Machine Learning Decision Support for Detecting Lipohypertrophy With Bedside Ultrasound: Proof-of-Concept Study

Bandari E, Beuzen T, Habashy L, Raza J, Yang X, Kapeluto J, Meneilly G, Madden K

Machine Learning Decision Support for Detecting Lipohypertrophy With Bedside Ultrasound: Proof-of-Concept Study

JMIR Form Res 2022;6(5):e34830

DOI: 10.2196/34830

PMID: 35404833

PMCID: 9123536

Machine Learning Decision Support for Bedside Ultrasound to Detect Lipohypertrophy

  • Ela Bandari; 
  • Tomas Beuzen; 
  • Lara Habashy; 
  • Javairia Raza; 
  • Xudong Yang; 
  • Jordanna Kapeluto; 
  • Graydon Meneilly; 
  • Kenneth Madden

ABSTRACT

Background:

The most common dermatological complication of insulin therapy is lipohypertrophy.

Objective:

As a proof-of-concept, we built and tested an automated model using a convolutional neural network (CNN) to detect the presence of lipohypertrophy in ultrasound images.

Methods:

Ultrasound images were obtained in a blinded fashion using a portable GE LOGIQe machine with an L8-18i-D probe (5-18 MHz; GE Healthcare, Frankfurt, Germany). The data was split into train, validation and test splits of 70%, 15%, and 15% respectively. Given the small size of the dataset, image augmentation techniques were used to expand the size of the training set and improve the model’s generalizability. To compare the performance of the different architectures, the team considered the accuracy and recall of the models when tested on our test set.

Results:

The DenseNet CNN architecture was found to have the highest accuracy (76%) and recall (76%) in detecting lipohypertrophy in ultrasound images, when compared to other CNN architectures. Additional work showed that the YOLOv5m object detection model could be used to help identify the approximate location of lipohypertrophy in ultrasound images identified as containing lipohypertrophy by the DenseNet CNN.

Conclusions:

We were able to demonstrate the ability of machine learning approaches to automate the process of detecting and locating lipohypertrophy.


 Citation

Please cite as:

Bandari E, Beuzen T, Habashy L, Raza J, Yang X, Kapeluto J, Meneilly G, Madden K

Machine Learning Decision Support for Detecting Lipohypertrophy With Bedside Ultrasound: Proof-of-Concept Study

JMIR Form Res 2022;6(5):e34830

DOI: 10.2196/34830

PMID: 35404833

PMCID: 9123536

Download PDF


Request queued. Please wait while the file is being generated. It may take some time.

© The authors. All rights reserved. This is a privileged document currently under peer-review/community review (or an accepted/rejected manuscript). Authors have provided JMIR Publications with an exclusive license to publish this preprint on it's website for review and ahead-of-print citation purposes only. While the final peer-reviewed paper may be licensed under a cc-by license on publication, at this stage authors and publisher expressively prohibit redistribution of this draft paper other than for review purposes.