Literature DB >> 29053075

Machine learning applied to neuroimaging for diagnosis of adult classic Chiari malformation: role of the basion as a key morphometric indicator.

Aintzane Urbizu1,2, Bryn A Martin3, Dulce Moncho4,5, Alex Rovira6, Maria A Poca5,7, Juan Sahuquillo5,7, Alfons Macaya2, Malena I Español8.   

Abstract

OBJECTIVE The current diagnostic criterion for Chiari malformation Type I (CM-I), based on tonsillar herniation (TH), includes a diversity of patients with amygdalar descent that may be caused by a variety of factors. In contrast, patients presenting with an overcrowded posterior cranial fossa, a key characteristic of the disease, may remain misdiagnosed if they have little or no TH. The objective of the present study was to use machine-learning classification methods to identify morphometric measures that help discern patients with classic CM-I to improve diagnosis and treatment and provide insight into the etiology of the disease. METHODS Fifteen morphometric measurements of the posterior cranial fossa were performed on midsagittal T1-weighted MR images obtained in 195 adult patients diagnosed with CM. Seven different machine-learning classification methods were applied to images from 117 patients with classic CM-I and 50 controls matched by age and sex to identify the best classifiers discriminating the 2 cohorts with the minimum number of parameters. These classifiers were then tested using independent CM cohorts representing different entities of the disease. RESULTS Machine learning identified combinations of 2 and 3 morphometric measurements that were able to discern not only classic CM-I (with more than 5 mm TH) but also other entities such as classic CM-I with moderate TH and CM Type 1.5 (CM-1.5), with high accuracy (> 87%) and independent of the TH criterion. In contrast, lower accuracy was obtained in patients with CM Type 0. The distances from the lower aspect of the corpus callosum, pons, and fastigium to the foramen magnum and the basal and Wackenheim angles were identified as the most relevant morphometric traits to differentiate these patients. The stronger significance (p < 0.01) of the correlations with the clivus length, compared with the supraoccipital length, suggests that these 5 relevant traits would be affected more by the relative position of the basion than the opisthion. CONCLUSIONS Tonsillar herniation as a unique criterion is insufficient for radiographic diagnosis of CM-I, which can be improved by considering the basion position. The position of the basion was altered in different entities of CM, including classic CM-I, classic CM-I with moderate TH, and CM-1.5. The authors propose a predictive model based on 3 parameters, all related to the basion location, to discern classic CM-I with 90% accuracy and suggest considering the anterior alterations in the evaluation of surgical procedures and outcomes.

Entities:  

Keywords:  CM = Chiari malformation; Chiari malformation; DT = decision tree; FM = foramen magnum; LR = logistic regression; MRI; NB = naïve Bayes; PCF = posterior cranial fossa; SVM = support vector machine; TH = tonsillar herniation; basion; k-NN = k-nearest neighbors; machine learning; skull base

Mesh:

Year:  2017        PMID: 29053075     DOI: 10.3171/2017.3.JNS162479

Source DB:  PubMed          Journal:  J Neurosurg        ISSN: 0022-3085            Impact factor:   5.115


  7 in total

1.  A Conditional Inference Tree Model for Predicting Sleep-Related Breathing Disorders in Patients With Chiari Malformation Type 1: Description and External Validation.

Authors:  Álex Ferré; María A Poca; María Dolore de la Calzada; Dulce Moncho; Aintzane Urbizu; Odile Romero; Gabriel Sampol; Juan Sahuquillo
Journal:  J Clin Sleep Med       Date:  2019-01-15       Impact factor: 4.062

2.  Are Two-Dimensional Morphometric Measures Reflective of Disease Severity in Adult Chiari I Malformation?

Authors:  Sumit Thakar; Vidyasagar Kanneganti; Blaise Simplice Talla Nwotchouang; Sara J Salem; Maggie Eppelheimer; Francis Loth; Philip A Allen; Saritha Aryan; Alangar S Hegde
Journal:  World Neurosurg       Date:  2021-10-25       Impact factor: 2.104

3.  Posterior cranial fossa and cervical spine morphometric abnormalities in symptomatic Chiari type 0 and Chiari type 1 malformation patients with and without syringomyelia.

Authors:  Enver I Bogdanov; Aisylu T Faizutdinova; John D Heiss
Journal:  Acta Neurochir (Wien)       Date:  2021-08-27       Impact factor: 2.816

Review 4.  Is there a morphometric cause of Chiari malformation type I? Analysis of existing literature.

Authors:  William H Shuman; Aislyn DiRisio; Alejandro Carrasquilla; Colin D Lamb; Addison Quinones; Aymeric Pionteck; Yang Yang; Mehmet Kurt; Raj K Shrivastava
Journal:  Neurosurg Rev       Date:  2021-07-13       Impact factor: 3.042

5.  Machine Learning Classification of Cerebral Aneurysm Rupture Status with Morphologic Variables and Hemodynamic Parameters.

Authors:  Satoru Tanioka; Fujimaro Ishida; Atsushi Yamamoto; Shigetoshi Shimizu; Hiroshi Sakaida; Mitsuru Toyoda; Nobuhisa Kashiwagi; Hidenori Suzuki
Journal:  Radiol Artif Intell       Date:  2020-01-15

6.  Use of deep learning in the MRI diagnosis of Chiari malformation type I.

Authors:  Kaishin W Tanaka; Carlo Russo; Sidong Liu; Marcus A Stoodley; Antonio Di Ieva
Journal:  Neuroradiology       Date:  2022-02-24       Impact factor: 2.995

7.  Rare functional genetic variants in COL7A1, COL6A5, COL1A2 and COL5A2 frequently occur in Chiari Malformation Type 1.

Authors:  Aintzane Urbizu; Melanie E Garrett; Karen Soldano; Oliver Drechsel; Dorothy Loth; Anna Marcé-Grau; Olga Mestres I Soler; Maria A Poca; Stephan Ossowski; Alfons Macaya; Francis Loth; Rick Labuda; Allison Ashley-Koch
Journal:  PLoS One       Date:  2021-05-11       Impact factor: 3.240

  7 in total

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