Brain Tortuosity as Biomarker to Classify Mild Cognitive Impairment and Control Subjects
- ,
- Karla C.Rojas Saavedrab(Autor),
- Luis Jiménez Ángelesa(Autor),
- Verónica Medina Bañuelosc(Autor)
- aUniversidad Nacional Autónoma de México,
- bUniversidad del Valle de México,
- cUniversidad Autónoma Metropolitana
Publication Information
Tipo de resultado
Idioma original
InglésPáginas desde-hasta (Número de páginas)
Páginas 327-333 (7 páginas)Hitos de publicación
- Publicada - 01/01/2020
Estado de publicación
Editorial
SpringerSerie de publicación
- Nombre de serie de publicación: IFMBE Proceedings
ISSN (Impreso): 1680-0737
ISSN (Electrónico): 1433-9277
Volumen: 75
ISBN (impreso)
9783030306472ID de publicación externa
- Scopus: 85075671494
Título de publicación principal
8th Latin American Conference on Biomedical Engineering and 42nd National Conference on Biomedical Engineering - Proceedings of CLAIB-CNIB 2019Editores de publicación principal
- César A. González Díaz
- Christian Chapa González
- Eric Laciar Leber
- Hugo A. Vélez
- Norma P. Puente
- Dora-Luz Flores
- Adriano O. Andrade
- Héctor A. Galván
- Fabiola Martínez
- Renato García
- Citlalli J. Trujillo
- Aldo R. Mejía
Abstract
Mild cognitive impairment (MCI) is an abnormal deterioration of cognitive functions, whose prevalence is considerable in adults older than 65 years old. Several of these cases will convert to Alzheimer’s disease and therefore, MCI’s simple, proper and opportune diagnosis continues to be a research field with great impact in public health. In this paper we propose tortuosity, which is defined as a shape measure that has been applied to quantify morphological changes in several anatomical structures, as a potential biomarker sensitive enough to depict early brain changes that appear in MCI subjects in comparison with healthy controls (HC). Also, a random forest (RF) classification strategy was implemented to discriminate between MCI and HC populations. A training population selected from the ADNI database and a test group of 21 mexican subjects were analyzed. Statistical analysis showed significant differences (p < 0.05) in tortuosity indices determined for MCI vs HC populations in most of the measured cortical structures. Classification rates increased by 6.7% during training and 4.77% during the test stage, when incorporating tortuosity to other image-based features set. This suggests that tortuosity is a promising morphological parameter to be considered for early stages of Alzheimer disease (AD) and that, combined with an RF classifier, it can adequately separate HC and MCI subjects.
