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Outlier detection and removal improves accuracy of machine learning approach to multispectral burn diagnostic imaging.
Li, Weizhi; Mo, Weirong; Zhang, Xu; Squiers, John J; Lu, Yang; Sellke, Eric W; Fan, Wensheng; DiMaio, J Michael; Thatcher, Jeffrey E.
Afiliación
  • Li W; Spectral MD, Inc., 2515 McKinney Avenue, Suite 1000, Dallas, Texas 75201, United States.
  • Mo W; Spectral MD, Inc., 2515 McKinney Avenue, Suite 1000, Dallas, Texas 75201, United States.
  • Zhang X; Spectral MD, Inc., 2515 McKinney Avenue, Suite 1000, Dallas, Texas 75201, United States.
  • Squiers JJ; Spectral MD, Inc., 2515 McKinney Avenue, Suite 1000, Dallas, Texas 75201, United StatesbBaylor Research Institute, 3310 Live Oak, Suite 501, Dallas, Texas 75204, United States.
  • Lu Y; Spectral MD, Inc., 2515 McKinney Avenue, Suite 1000, Dallas, Texas 75201, United States.
  • Sellke EW; Spectral MD, Inc., 2515 McKinney Avenue, Suite 1000, Dallas, Texas 75201, United States.
  • Fan W; Spectral MD, Inc., 2515 McKinney Avenue, Suite 1000, Dallas, Texas 75201, United States.
  • DiMaio JM; Spectral MD, Inc., 2515 McKinney Avenue, Suite 1000, Dallas, Texas 75201, United StatesbBaylor Research Institute, 3310 Live Oak, Suite 501, Dallas, Texas 75204, United States.
  • Thatcher JE; Spectral MD, Inc., 2515 McKinney Avenue, Suite 1000, Dallas, Texas 75201, United States.
J Biomed Opt ; 20(12): 121305, 2015 Dec.
Article en En | MEDLINE | ID: mdl-26305321
ABSTRACT
Multispectral imaging (MSI) was implemented to develop a burn tissue classification device to assist burn surgeons in planning and performing debridement surgery. To build a classification model via machine learning, training data accurately representing the burn tissue was needed, but assigning raw MSI data to appropriate tissue classes is prone to error. We hypothesized that removing outliers from the training dataset would improve classification accuracy. A swine burn model was developed to build an MSI training database and study an algorithm's burn tissue classification abilities. After the ground-truth database was generated, we developed a multistage method based on Z -test and univariate analysis to detect and remove outliers from the training dataset. Using 10-fold cross validation, we compared the algorithm's accuracy when trained with and without the presence of outliers. The outlier detection and removal method reduced the variance of the training data. Test accuracy was improved from 63% to 76%, matching the accuracy of clinical judgment of expert burn surgeons, the current gold standard in burn injury assessment. Given that there are few surgeons and facilities specializing in burn care, this technology may improve the standard of burn care for patients without access to specialized facilities.
Asunto(s)

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Análisis Espectral / Quemaduras / Aumento de la Imagen / Artefactos / Imagen Óptica / Aprendizaje Automático Tipo de estudio: Diagnostic_studies / Prognostic_studies Límite: Animals Idioma: En Revista: J Biomed Opt Asunto de la revista: ENGENHARIA BIOMEDICA / OFTALMOLOGIA Año: 2015 Tipo del documento: Article País de afiliación: Estados Unidos

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Asunto principal: Análisis Espectral / Quemaduras / Aumento de la Imagen / Artefactos / Imagen Óptica / Aprendizaje Automático Tipo de estudio: Diagnostic_studies / Prognostic_studies Límite: Animals Idioma: En Revista: J Biomed Opt Asunto de la revista: ENGENHARIA BIOMEDICA / OFTALMOLOGIA Año: 2015 Tipo del documento: Article País de afiliación: Estados Unidos