OBJECTIVE: Hydrocephalus is a medical condition in which there is an abnormal accumulation of cerebrospinal fluid (CSF) in the brain. Segmentation of brain imagery into brain tissue and CSF [before and after surgery, i.e., preoperative (pre-op) versus postoperative (post-op)] plays a crucial role in evaluating surgical treatment. Segmentation of pre-op images is often a relatively straightforward problem and has been well researched. However, segmenting post-op computational tomographic (CT) scans becomes more challenging due to distorted anatomy and subdural hematoma collections pressing on the brain. Most intensity- and feature-based segmentation methods fail to separate subdurals from brain and CSF as subdural geometry varies greatly across different patients and their intensity varies with time. We combat this problem by a learning approach that treats segmentation as supervised classification at the pixel level, i.e., a training set of CT scans with labeled pixel identities is employed. METHODS: Our contributions include: 1) a dictionary learning framework that learns class (segment) specific dictionaries that can efficiently represent test samples from the same class while poorly represent corresponding samples from other classes; 2) quantification of associated computation and memory footprint; and 3) a customized training and test procedure for segmenting post-op hydrocephalic CT images. RESULTS: Experiments performed on infant CT brain images acquired from the CURE Children's Hospital of Uganda reveal the success of our method against the state-of-the-art alternatives. We also demonstrate that the proposed algorithm is computationally less burdensome and exhibits a graceful degradation against a number of training samples, enhancing its deployment potential.
OBJECTIVE:Hydrocephalus is a medical condition in which there is an abnormal accumulation of cerebrospinal fluid (CSF) in the brain. Segmentation of brain imagery into brain tissue and CSF [before and after surgery, i.e., preoperative (pre-op) versus postoperative (post-op)] plays a crucial role in evaluating surgical treatment. Segmentation of pre-op images is often a relatively straightforward problem and has been well researched. However, segmenting post-op computational tomographic (CT) scans becomes more challenging due to distorted anatomy and subdural hematoma collections pressing on the brain. Most intensity- and feature-based segmentation methods fail to separate subdurals from brain and CSF as subdural geometry varies greatly across different patients and their intensity varies with time. We combat this problem by a learning approach that treats segmentation as supervised classification at the pixel level, i.e., a training set of CT scans with labeled pixel identities is employed. METHODS: Our contributions include: 1) a dictionary learning framework that learns class (segment) specific dictionaries that can efficiently represent test samples from the same class while poorly represent corresponding samples from other classes; 2) quantification of associated computation and memory footprint; and 3) a customized training and test procedure for segmenting post-op hydrocephalic CT images. RESULTS: Experiments performed on infant CT brain images acquired from the CURE Children's Hospital of Uganda reveal the success of our method against the state-of-the-art alternatives. We also demonstrate that the proposed algorithm is computationally less burdensome and exhibits a graceful degradation against a number of training samples, enhancing its deployment potential.
Authors: Pim Moeskops; Max A Viergever; Adrienne M Mendrik; Linda S de Vries; Manon J N L Benders; Ivana Isgum Journal: IEEE Trans Med Imaging Date: 2016-03-30 Impact factor: 10.048
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Authors: Antonios Makropoulos; Ioannis S Gousias; Christian Ledig; Paul Aljabar; Ahmed Serag; Joseph V Hajnal; A David Edwards; Serena J Counsell; Daniel Rueckert Journal: IEEE Trans Med Imaging Date: 2014-05-06 Impact factor: 10.048
Authors: V Adduru; S A Baum; C Zhang; M Helguera; R Zand; M Lichtenstein; C J Griessenauer; A M Michael Journal: AJNR Am J Neuroradiol Date: 2020-01-30 Impact factor: 3.825
Authors: Joshua R Harper; Venkateswararao Cherukuri; Tom O'Reilly; Mingzhao Yu; Edith Mbabazi-Kabachelor; Ronald Mulando; Kevin N Sheth; Andrew G Webb; Benjamin C Warf; Abhaya V Kulkarni; Vishal Monga; Steven J Schiff Journal: Neuroimage Clin Date: 2021-11-23 Impact factor: 4.881