Repository logo
  • English
  • Deutsch
  • Español
  • Français
  • Log In
    New user? Click here to register.Have you forgotten your password?

  • English
  • Deutsch
  • Español
  • Français
  • Log In
    New user? Click here to register.Have you forgotten your password?
Repository logo
  • Communities & Collections
  • Research Outputs
  • Fundings & Projects
  • Researchers
  • Statistics
  1. Home
  2. Current Research Information System UV
  3. Publicaciones
  4. Her2 Classification In Breast Cancer Cells: A New Explainable Machine Learning Application For Immunohistochemistry
 
  • Details
Options

Her2 Classification In Breast Cancer Cells: A New Explainable Machine Learning Application For Immunohistochemistry

Date Issued
2022-12-14
Author(s)
Marchant, Ivanny  
Facultad de Medicina  
Minonzio, Jean-Gabriel  
Facultad de Ingeniería  
Muñoz, Roberto  
Facultad de Ingeniería  
Olivares, Rodrigo  
Facultad de Ingeniería  
Olivero, Pablo  
Facultad de Medicina  
Carlo Lozano
Paulina González
Wilfredo Alejandro González‐Arriagada
Córdova, Claudio  
Facultad de Medicina  
DOI
10.3892/ol.2022.13630
WoS ID
WOS:000907284500001
Abstract
The immunohistochemical (IHC) evaluation of epidermal growth factor 2 (HER2) for the diagnosis of breast cancer is still qualitative with a high degree of inter-observer variability, and thus requires the incorporation of complementary techniques such as fluorescent <i>in situ</i> hybridization (FISH) to resolve the diagnosis. Implementing automatic algorithms to classify IHC biomarkers is crucial for typifying the tumor and deciding on therapy for each patient with better performance. The present study aims to demonstrate that, using an explainable Machine Learning (ML) model for the classification of HER2 photomicrographs, it is possible to determine criteria to improve the value of IHC analysis. We trained a logistic regression-based supervised ML model with 393 IHC microscopy images from 131 patients, to discriminate between upregulated and normal expression of the HER2 protein. Pathologists' diagnoses (IHC only) vs. the final diagnosis complemented with FISH (IHC + FISH) were used as training outputs. Basic performance metrics and receiver operating characteristic curve analysis were used together with an explainability algorithm based on Shapley Additive exPlanations (SHAP) values to understand training differences. The model could discriminate amplified IHC from normal expression with better performance when the training output was the IHC + FISH final diagnosis (IHC vs. IHC + FISH: area under the curve, 0.94 vs. 0.81). This may be explained by the increased analytical impact of the membrane distribution criteria over the global intensity of the signal, according to SHAP value interpretation. The classification model improved its performance when the training input was the final diagnosis, downplaying the weighting of the intensity of the IHC signal, suggesting that to improve pathological diagnosis before FISH consultation, it is necessary to emphasize subcellular patterns of staining.
Subjects

Cancer Research

Oncology

OCDE Subjects

Medical And Health Sc...

Quartile (Date Issued)
Q4
License
acceso abierto

  • Cookie settings
  • Privacy policy
  • End User Agreement
  • Send Feedback

Hosting & Support by

Built with DSpace-CRIS software - Extension maintained and optimized by 4Science