MONAI Label: A framework for AI-assisted Interactive Labeling of 3D Medical Images
This addresses the problem of time-consuming annotation for researchers and clinicians in radiology, though it is incremental as it builds on existing active learning strategies.
The paper tackles the bottleneck of expensive manual annotation for training supervised ML models in medical imaging by introducing MONAI Label, a framework for AI-assisted interactive labeling of 3D medical images, resulting in significantly reduced annotation times on two public datasets.
The lack of annotated datasets is a major bottleneck for training new task-specific supervised machine learning models, considering that manual annotation is extremely expensive and time-consuming. To address this problem, we present MONAI Label, a free and open-source framework that facilitates the development of applications based on artificial intelligence (AI) models that aim at reducing the time required to annotate radiology datasets. Through MONAI Label, researchers can develop AI annotation applications focusing on their domain of expertise. It allows researchers to readily deploy their apps as services, which can be made available to clinicians via their preferred user interface. Currently, MONAI Label readily supports locally installed (3D Slicer) and web-based (OHIF) frontends and offers two active learning strategies to facilitate and speed up the training of segmentation algorithms. MONAI Label allows researchers to make incremental improvements to their AI-based annotation application by making them available to other researchers and clinicians alike. Additionally, MONAI Label provides sample AI-based interactive and non-interactive labeling applications, that can be used directly off the shelf, as plug-and-play to any given dataset. Significant reduced annotation times using the interactive model can be observed on two public datasets.