Evaluating the Viability of a Smartphone-Based Annotation Tool for Faster and Accurate Image Labelling for Artificial Intelligence in Diabetic Retinopathy.
Arvind Kumar MoryaJaitra GowdarAbhishek KaushalNachiket MakwanaSaurav BiswasPuneeth RajShabnam SinghSharat HegdeRaksha VaishnavSharan ShettyVidyambika S PVedang ShahSabita PaulSonali MuralidharGirish VelisWinston PaduaTushar WaghuleNazneen NazmSangeetha JeganathanAyyappa Reddy MallidiDona Susan JohnSagnik SenSandeep ChoudharyNishant ParasharBhavana SharmaPankaja Ravi RaghavRaghuveer UdawatSampat RamUmang P SalodiaPublished in: Clinical ophthalmology (Auckland, N.Z.) (2021)
Our aim was to make Annotation of Medical imaging easier and to minimize time taken for annotations without quality degradation. The user feedback and feature usage statistics confirm our hypotheses of incorporation of brightness and contrast variations, green channels and zooming add-ons in correlation to certain disease types. Simulation of multiple review cycles and establishing quality control can boost the accuracy of AI models even further. Although our study aims at developing an annotation tool for diagnosing and classifying diabetic retinopathy fundus images but same concept can be used for fundus images of other ocular diseases as well as other streams of medical science such as radiology where image-based diagnostic applications are utilised.
Keyphrases
- diabetic retinopathy
- artificial intelligence
- deep learning
- quality control
- optical coherence tomography
- convolutional neural network
- big data
- machine learning
- rna seq
- high resolution
- healthcare
- magnetic resonance
- public health
- single cell
- quality improvement
- magnetic resonance imaging
- computed tomography
- contrast enhanced
- virtual reality