| Literature DB >> 30680471 |
Junghwan Cho1, Ki-Su Park2, Manohar Karki3, Eunmi Lee3, Seokhwan Ko3, Jong Kun Kim4, Dongeun Lee4, Jaeyoung Choe4, Jeongwoo Son4, Myungsoo Kim2, Sukhee Lee5, Jeongho Lee6, Changhyo Yoon7, Sinyoul Park8.
Abstract
Highly accurate detection of the intracranial hemorrhage without delay is a critical clinical issue for the diagnostic decision and treatment in an emergency room. In the context of a study on diagnostic accuracy, there is a tradeoff between sensitivity and specificity. In order to improve sensitivity while preserving specificity, we propose a cascade deep learning model constructed using two convolutional neural networks (CNNs) and dual fully convolutional networks (FCNs). The cascade CNN model is built for identifying bleeding; hereafter the dual FCN is to detect five different subtypes of intracranial hemorrhage and to delineate their lesions. Using a total of 135,974 CT images including 33,391 images labeled as bleeding, each of CNN/FCN models was trained separately on image data preprocessed by two different settings of window level/width. One is a default window (50/100[level/width]) and the other is a stroke window setting (40/40). By combining them, we obtained a better outcome on both binary classification and segmentation of hemorrhagic lesions compared to a single CNN and FCN model. In determining whether it is bleeding or not, there was around 1% improvement in sensitivity (97.91% [± 0.47]) while retaining specificity (98.76% [± 0.10]). For delineation of bleeding lesions, we obtained overall segmentation performance at 80.19% in precision and 82.15% in recall which is 3.44% improvement compared to using a single FCN model.Entities:
Keywords: CT window setting; Cascaded deep learning model; Fully convolutional networks; Intracranial hemorrhage; Lesion segmentation; Sensitivity
Year: 2019 PMID: 30680471 PMCID: PMC6499861 DOI: 10.1007/s10278-018-00172-1
Source DB: PubMed Journal: J Digit Imaging ISSN: 0897-1889 Impact factor: 4.056