Abstract
Intracranial hemorrhage (ICH) is a life-threatening emergency with high rates of mortality and morbidity. Rapid and accurate detection of ICH is crucial for patients to get a timely treatment. In order to achieve the automatic diagnosis of ICH, most deep learning models rely on huge amounts of slice labels for training. Unfortunately, the manual annotation of CT slices by radiologists is time-consuming and costly. To diagnose ICH, in this work, we propose to use an attention-based multiple instance learning (Att-MIL) approach implemented through the combination of an attention-based convolutional neural network (Att-CNN) and a variational Gaussian process for multiple instance learning (VGP-MIL). Only labels at scan-level are necessary for training. Our method trains the model using scan labels and assigns each slice with an attention weight, which can be used to provide slice-level predictions, and uses the VGPMIL model based on low-dimensional features extracted by the Att-CNN to obtain improved predictions both at slice and scan levels. To analyze the performance of the proposed approach, our model has been trained on 1150 scans from an RSNA dataset and evaluated on 490 scans from an external CQ500 dataset. Our method outperforms other methods using the same scan-level training and is able to achieve comparable or even better results than other methods relying on slicelevel annotations.
Competing Interest Statement
The authors have declared no competing interest.
Footnotes
⋆ This work has received funding from the European Union’s Horizon 2020 research and innovation programme under the Marie Skłodowska Curie grant agreement No 860627 (CLARIFY Project) and also from the Spanish Ministry of Science and Innovation under project PID2019-105142RB-C22.
https://ivpl.northwestern.edu/, yuanwu2020{at}u.northwestern.edu, a-katsaggelos{at}northwestern.edu, http://decsai.ugr.es/, arne{at}decsai.ugr.es, rms{at}decsai.ugr.es, enrique0197{at}correo.ugr.es