nnDetection: A Self-configuring Method for Medical Object Detection

Authors: Michael Baumgartner, Paul F. Jaeger, Fabian Isensee, Klaus H. Maier-Hein

MICCAI 2021 (splitted LN data set for camera-ready version); *Michael Baumgartner and Paul F. J\"ager contributed equally

Abstract: Simultaneous localisation and categorization of objects in medical images, also referred to as medical object detection, is of high clinical relevance because diagnostic decisions often depend on rating of objects rather than e.g. pixels. For this task, the cumbersome and iterative process of method configuration constitutes a major research bottleneck. Recently, nnU-Net has tackled this challenge for the task of image segmentation with great success. Following nnU-Net's agenda, in this work we systematize and automate the configuration process for medical object detection. The resulting self-configuring method, nnDetection, adapts itself without any manual intervention to arbitrary medical detection problems while achieving results en par with or superior to the state-of-the-art. We demonstrate the effectiveness of nnDetection on two public benchmarks, ADAM and LUNA16, and propose 11 further medical object detection tasks on public data sets for comprehensive method evaluation. Code is at https://github.com/MIC-DKFZ/nnDetection .

Submitted to arXiv on 01 Jun. 2021

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