Literature DB >> 35365446

[Performance of low-dose CT image reconstruction for detecting intracerebral hemorrhage: selection of dose, algorithms and their combinations].

S Fu1,2, M Li3, Z Bian1,2, J Ma1,2.   

Abstract

OBJECTIVE: To investigate the performance of different low-dose CT image reconstruction algorithms for detecting intracerebral hemorrhage.
METHODS: Low-dose CT imaging simulation was performed on CT images of intracerebral hemorrhage at 30%, 25% and 20% of normal dose level (defined as 100% dose). Seven algorithms were tested to reconstruct low-dose CT images for noise suppression, including filtered back projection algorithm (FBP), penalized weighted least squares-total variation (PWLS-TV), non-local mean filter (NLM), block matching 3D (BM3D), residual encoding-decoding convolutional neural network (REDCNN), the FBP convolutional neural network (FBPConvNet) and image restoration iterative residual convolutional network (IRLNet). A deep learning-based model (CNN-LSTM) was used to detect intracerebral hemorrhage on normal dose CT images and low-dose CT images reconstructed using the 7 algorithms. The performance of different reconstruction algorithms for detecting intracerebral hemorrhage was evaluated by comparing the results between normal dose CT images and low-dose CT images.
RESULTS: At different dose levels, the low-dose CT images reconstructed by FBP had accuracies of detecting intracerebral hemorrhage of 82.21%, 74.61% and 65.55% at 30%, 25% and 20% dose levels, respectively. At the same dose level (30% dose), the images reconstructed by FBP, PWLS-TV, NLM, BM3D, REDCNN, FBPConvNet and IRLNet algorithms had accuracies for detecting intracerebral hemorrhage of 82.21%, 86.80%, 89.37%, 81.43%, 90.05%, 90.72% and 93.51%, respectively. The images reconstructed by IRLNet at 30%, 25% and 20% dose levels had accuracies for detecting intracerebral hemorrhage of 93.51%, 93.51% and 93.06%, respectively.
CONCLUSION: The performance of reconstructed low-dose CT images for detecting intracerebral hemorrhage is significantly affected by both dose and reconstruction algorithms. In clinical practice, choosing appropriate dose level and reconstruction algorithm can greatly reduce the radiation dose and ensure the detection performance of CT imaging for intracerebral hemorrhage.

Entities:  

Keywords:  deep learning; intracranial hemorrhage detection; low-dose CT imaging

Mesh:

Year:  2022        PMID: 35365446      PMCID: PMC8983357          DOI: 10.12122/j.issn.1673-4254.2022.02.08

Source DB:  PubMed          Journal:  Nan Fang Yi Ke Da Xue Xue Bao        ISSN: 1673-4254


  23 in total

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Authors:  Hu Chen; Yi Zhang; Mannudeep K Kalra; Feng Lin; Yang Chen; Peixi Liao; Jiliu Zhou; Ge Wang
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8.  Expert-level detection of acute intracranial hemorrhage on head computed tomography using deep learning.

Authors:  Weicheng Kuo; Christian Hӓne; Pratik Mukherjee; Jitendra Malik; Esther L Yuh
Journal:  Proc Natl Acad Sci U S A       Date:  2019-10-21       Impact factor: 11.205

9.  A deep learning algorithm for automatic detection and classification of acute intracranial hemorrhages in head CT scans.

Authors:  Xiyue Wang; Tao Shen; Sen Yang; Jun Lan; Yanming Xu; Minghui Wang; Jing Zhang; Xiao Han
Journal:  Neuroimage Clin       Date:  2021-08-11       Impact factor: 4.881

10.  A multi-label classification model for full slice brain computerised tomography image.

Authors:  Jianqiang Li; Guanghui Fu; Yueda Chen; Pengzhi Li; Bo Liu; Yan Pei; Hui Feng
Journal:  BMC Bioinformatics       Date:  2020-11-18       Impact factor: 3.169

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