Deutsch
Albanian
Arabic
Armenian
Azerbaijani
Belarusian
Bengali
Bosnian
Catalan
Czech
Danish
Deutsch
Dutch
English
Estonian
Finnish
Français
Greek
Haitian Creole
Hebrew
Hindi
Hungarian
Icelandic
Indonesian
Irish
Italian
Japanese
Korean
Latvian
Lithuanian
Macedonian
Mongolian
Norwegian
Persian
Polish
Portuguese
Romanian
Russian
Serbian
Slovak
Slovenian
Spanish
Swahili
Swedish
Turkish
Ukrainian
Vietnamese
Български
中文(简体)
中文(繁體)
Computer Methods and Programs in Biomedicine 2020-Aug

White learning methodology: A case study of cancer-related disease factors analysis in real-time PACS environment

Nur registrierte Benutzer können Artikel übersetzen
Einloggen Anmelden
Der Link wird in der Zwischenablage gespeichert
Tengyue Li
Simon Fong
Shirley Siu
Xin-She Yang
Lian-Sheng Liu
Sabah Mohammed

Schlüsselwörter

Abstrakt

Background and objective: Bayesian network is a probabilistic model of which the prediction accuracy may not be one of the highest in the machine learning family. Deep learning (DL) on the other hand possess of higher predictive power than many other models. How reliable the result is, how it is deduced, how interpretable the prediction by DL mean to users, remain obscure. DL functions like a black box. As a result, many medical practitioners are reductant to use deep learning as the only tool for critical machine learning application, such as aiding tool for cancer diagnosis.

Methods: In this paper, a framework of white learning is being proposed which takes advantages of both black box learning and white box learning. Usually, black box learning will give a high standard of accuracy and white box learning will provide an explainable direct acyclic graph. According to our design, there are 3 stages of White Learning, loosely coupled WL, semi coupled WL and tightly coupled WL based on degree of fusion of the white box learning and black box learning. In our design, a case of loosely coupled WL is tested on breast cancer dataset. This approach uses deep learning and an incremental version of Naïve Bayes network. White learning is largely defied as a systemic fusion of machine learning models which result in an explainable Bayes network which could find out the hidden relations between features and class and deep learning which would give a higher accuracy of prediction than other algorithms. We designed a series of experiments for this loosely coupled WL model.

Results: The simulation results show that using WL compared to standard black-box deep learning, the levels of accuracy and kappa statistics could be enhanced up to 50%. The performance of WL seems more stable too in extreme conditions such as noise and high dimensional data. The relations by Bayesian network of WL are more concise and stronger in affinity too.

Conclusion: The experiments results deliver positive signals that WL is possible to output both high classification accuracy and explainable relations graph between features and class.

Keywords: Bayesian network; Data mining methodology; Deep learning; Radiological data analysis.

Treten Sie unserer
Facebook-Seite bei

Die vollständigste Datenbank für Heilkräuter, die von der Wissenschaft unterstützt wird

  • Arbeitet in 55 Sprachen
  • Von der Wissenschaft unterstützte Kräuterkuren
  • Kräutererkennung durch Bild
  • Interaktive GPS-Karte - Kräuter vor Ort markieren (in Kürze)
  • Lesen Sie wissenschaftliche Veröffentlichungen zu Ihrer Suche
  • Suchen Sie nach Heilkräutern nach ihrer Wirkung
  • Organisieren Sie Ihre Interessen und bleiben Sie über Neuigkeiten, klinische Studien und Patente auf dem Laufenden

Geben Sie ein Symptom oder eine Krankheit ein und lesen Sie über Kräuter, die helfen könnten, geben Sie ein Kraut ein und sehen Sie Krankheiten und Symptome, gegen die es angewendet wird.
* Alle Informationen basieren auf veröffentlichten wissenschaftlichen Forschungsergebnissen

Google Play badgeApp Store badge