Deep Learning Achieves Neuroradiologist-Level Performance in Detecting Hydrocephalus Requiring Treatment
Yu Huang
1
,
Raquel Moreno
1
,
Rachna Malani
2, 3
,
Alicia Meng
1, 3
,
Nathaniel Swinburne
1, 3
,
Andrei I. Holodny
1
,
Ye Choi
1
,
Henry Rusinek
4, 5
,
James B Golomb
5, 6
,
Ajax George
4
,
Lucas C. Parra
7
,
Robert J. Young
1, 3
Publication type: Journal Article
Publication date: 2022-05-17
scimago Q2
wos Q1
SJR: 0.734
CiteScore: 8.5
Impact factor: 3.8
ISSN: 08971889, 1618727X
PubMed ID:
35581409
Computer Science Applications
Radiological and Ultrasound Technology
Radiology, Nuclear Medicine and imaging
Abstract
In large clinical centers a small subset of patients present with hydrocephalus that requires surgical treatment. We aimed to develop a screening tool to detect such cases from the head MRI with performance comparable to neuroradiologists. We leveraged 496 clinical MRI exams collected retrospectively at a single clinical site from patients referred for any reason. This diagnostic dataset was enriched to have 259 hydrocephalus cases. A 3D convolutional neural network was trained on 16 manually segmented exams (ten hydrocephalus) and subsequently used to automatically segment the remaining 480 exams and extract volumetric anatomical features. A linear classifier of these features was trained on 240 exams to detect cases of hydrocephalus that required treatment with surgical intervention. Performance was compared to four neuroradiologists on the remaining 240 exams. Performance was also evaluated on a separate screening dataset of 451 exams collected from a routine clinical population to predict the consensus reading from four neuroradiologists using images alone. The pipeline was also tested on an external dataset of 31 exams from a 2nd clinical site. The most discriminant features were the Magnetic Resonance Hydrocephalic Index (MRHI), ventricle volume, and the ratio between ventricle and brain volume. At matching sensitivity, the specificity of the machine and the neuroradiologists did not show significant differences for detection of hydrocephalus on either dataset (proportions test, p > 0.05). ROC performance compared favorably with the state-of-the-art (AUC 0.90–0.96), and replicated in the external validation. Hydrocephalus cases requiring treatment can be detected automatically from MRI in a heterogeneous patient population based on quantitative characterization of brain anatomy with performance comparable to that of neuroradiologists.
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Total citations:
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Citations from 2024:
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GOST
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Huang Yu. et al. Deep Learning Achieves Neuroradiologist-Level Performance in Detecting Hydrocephalus Requiring Treatment // Journal of Digital Imaging. 2022. Vol. 35. No. 6.
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Huang Yu., Moreno R., Malani R., Meng A., Swinburne N., Holodny A. I., Choi Y., Rusinek H., Golomb J. B., George A., Parra L. C., Young R. J. Deep Learning Achieves Neuroradiologist-Level Performance in Detecting Hydrocephalus Requiring Treatment // Journal of Digital Imaging. 2022. Vol. 35. No. 6.
Cite this
RIS
Copy
TY - JOUR
DO - 10.1007/s10278-022-00654-3
UR - https://doi.org/10.1007/s10278-022-00654-3
TI - Deep Learning Achieves Neuroradiologist-Level Performance in Detecting Hydrocephalus Requiring Treatment
T2 - Journal of Digital Imaging
AU - Huang, Yu
AU - Moreno, Raquel
AU - Malani, Rachna
AU - Meng, Alicia
AU - Swinburne, Nathaniel
AU - Holodny, Andrei I.
AU - Choi, Ye
AU - Rusinek, Henry
AU - Golomb, James B
AU - George, Ajax
AU - Parra, Lucas C.
AU - Young, Robert J.
PY - 2022
DA - 2022/05/17
PB - Springer Nature
IS - 6
VL - 35
PMID - 35581409
SN - 0897-1889
SN - 1618-727X
ER -
Cite this
BibTex (up to 50 authors)
Copy
@article{2022_Huang,
author = {Yu Huang and Raquel Moreno and Rachna Malani and Alicia Meng and Nathaniel Swinburne and Andrei I. Holodny and Ye Choi and Henry Rusinek and James B Golomb and Ajax George and Lucas C. Parra and Robert J. Young},
title = {Deep Learning Achieves Neuroradiologist-Level Performance in Detecting Hydrocephalus Requiring Treatment},
journal = {Journal of Digital Imaging},
year = {2022},
volume = {35},
publisher = {Springer Nature},
month = {may},
url = {https://doi.org/10.1007/s10278-022-00654-3},
number = {6},
doi = {10.1007/s10278-022-00654-3}
}