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Analysis of survival for lung cancer resections cases with fuzzy and soft set theory in surgical decision making.

José Carlos R AlcantudGonzalo VarelaBeatriz Santos-BuitragoGustavo Santos-GarcíaMarcelo F Jiménez
Published in: PloS one (2019)
The evaluation of surgical risk in patients undertaking pulmonary resection is a primary target for thoracic surgeons. Lung cancer survival is influenced by many factors. The computational performance of our algorithm is critically analyzed by an experimental study. The correct survival classification is achieved with an accuracy of 79.0%. Our novel soft-set based criterion is an effective and precise diagnosis application for the determination of the survival rate.
Keyphrases
  • end stage renal disease
  • free survival
  • machine learning
  • decision making
  • deep learning
  • newly diagnosed
  • chronic kidney disease
  • pulmonary hypertension
  • liver metastases