Literature DB >> 34601899

A Robust Deep Learning Segmentation Method for Hematoma Volumetric Detection in Intracerebral Hemorrhage.

Nannan Yu1, He Yu1, Haonan Li2, Nannan Ma3, Chunai Hu3, Jia Wang2.   

Abstract

BACKGROUND AND
PURPOSE: Hematoma volume (HV) is a significant diagnosis for determining the clinical stage and therapeutic approach for intracerebral hemorrhage (ICH). The aim of this study is to develop a robust deep learning segmentation method for the fast and accurate HV analysis using computed tomography.
METHODS: A novel dimension reduction UNet (DR-UNet) model was developed for computed tomography image segmentation and HV measurement. Two data sets, 512 ICH patients with 12 568 computed tomography slices in the retrospective data set and 50 ICH patients with 1257 slices in the prospective data set, were used for network training, validation, and internal and external testing. Moreover, 13 irregular hematoma cases, 11 subdural and epidural hematoma cases, and 50 different HV cases into 3 groups (<30, 30-60, and >60 mL) were selected to further evaluate the robustness of DR-UNet. The image segmentation performance of DR-UNet was compared with those of UNet, the fuzzy clustering method, and the active contour method. The HV measurement performance was compared using DR-UNet, UNet, and the Coniglobus formula method.
RESULTS: Using DR-UNet, the segmentation model achieved a performance similar to that of expert clinicians in 2 independent test data sets containing internal testing data (Dice of 0.861±0.139) and external testing data (Dice of 0.874±0.130). The HV measurement derived from DR-UNet was strongly correlated with that from manual segmentation (R2=0.9979; P<0.0001). In the irregularly shaped hematoma group and the subdural and epidural hematoma group, DR-UNet was more robust than UNet in both hematoma segmentation and HV measurement. There is no statistical significance in segmentation accuracy among 3 different HV groups.
CONCLUSIONS: DR-UNet can segment hematomas from the computed tomography scans of ICH patients and quantify the HV with better accuracy and greater efficiency than the main existing methods and with similar performance to expert clinicians. Due to robust performance and stable segmentation on different ICHs, DR-UNet could facilitate the development of deep learning systems for a variety of clinical applications.

Entities:  

Keywords:  cerebral hemorrhage; cluster analysis; deep learning; humans; prospective studies

Mesh:

Year:  2021        PMID: 34601899     DOI: 10.1161/STROKEAHA.120.032243

Source DB:  PubMed          Journal:  Stroke        ISSN: 0039-2499            Impact factor:   7.914


  3 in total

1.  Evaluation of Traumatic Subdural Hematoma Volume by Using Image Segmentation Assessment Based on Deep Learning.

Authors:  Dan Chen; Lin Bian; Hao-Yuan He; Ya-Dong Li; Chao Ma; Lian-Gang Mao
Journal:  Comput Math Methods Med       Date:  2022-06-28       Impact factor: 2.809

2.  Fusion-Based Deep Learning with Nature-Inspired Algorithm for Intracerebral Haemorrhage Diagnosis.

Authors:  Nada M Alfaer; Hassan M Aljohani; Sayed Abdel-Khalek; Abdulaziz S Alghamdi; Romany F Mansour
Journal:  J Healthc Eng       Date:  2022-01-18       Impact factor: 2.682

3.  Convolutional Neural Network in Microsurgery Treatment of Spontaneous Intracerebral Hemorrhage.

Authors:  Xiaoqiang Wu; Dan Chen
Journal:  Comput Math Methods Med       Date:  2022-08-09       Impact factor: 2.809

  3 in total

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