Literature DB >> 26380181

Computer modeling of lung cancer diagnosis-to-treatment process.

Feng Ju1, Hyo Kyung Lee1, Raymond U Osarogiagbon1, Xinhua Yu1, Nick Faris1, Jingshan Li1.   

Abstract

We introduce an example of a rigorous, quantitative method for quality improvement in lung cancer care-delivery. Computer process modeling methods are introduced for lung cancer diagnosis, staging and treatment selection process. Two types of process modeling techniques, discrete event simulation (DES) and analytical models, are briefly reviewed. Recent developments in DES are outlined and the necessary data and procedures to develop a DES model for lung cancer diagnosis, leading up to surgical treatment process are summarized. The analytical models include both Markov chain model and closed formulas. The Markov chain models with its application in healthcare are introduced and the approach to derive a lung cancer diagnosis process model is presented. Similarly, the procedure to derive closed formulas evaluating the diagnosis process performance is outlined. Finally, the pros and cons of these methods are discussed.

Entities:  

Keywords:  Lung cancer quality improvement; Markov chain; analytical model; closed formula; discrete event simulation (DES); process modeling

Year:  2015        PMID: 26380181      PMCID: PMC4549484          DOI: 10.3978/j.issn.2218-6751.2015.07.16

Source DB:  PubMed          Journal:  Transl Lung Cancer Res        ISSN: 2218-6751


  32 in total

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6.  The IASLC Lung Cancer Staging Project: proposals for the revision of the TNM stage groupings in the forthcoming (seventh) edition of the TNM Classification of malignant tumours.

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9.  Optimizing patient flow in a large hospital surgical centre by means of discrete-event computer simulation models.

Authors:  Rodrigo B Ferreira; Fernando C Coelli; Wagner C A Pereira; Renan M V R Almeida
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10.  A stochastic Markov chain model to describe lung cancer growth and metastasis.

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2.  Contrast-enhanced magnetic resonance imaging with a novel nano-size contrast agent for the clinical diagnosis of patients with lung cancer.

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3.  Reducing Bottlenecks to Improve the Efficiency of the Lung Cancer Care Delivery Process: A Process Engineering Modeling Approach to Patient-Centered Care.

Authors:  Feng Ju; Hyo Kyung Lee; Xinhua Yu; Nicholas R Faris; Fedoria Rugless; Shan Jiang; Jingshan Li; Raymond U Osarogiagbon
Journal:  J Med Syst       Date:  2017-12-01       Impact factor: 4.460

4.  Examining the diagnostic pathway for lung cancer patients in Wales using discrete event simulation.

Authors:  Tracey J England; Paul R Harper; Tom Crosby; Daniel Gartner; Edilson F Arruda; Kieran G Foley; Ian J Williamson
Journal:  Transl Lung Cancer Res       Date:  2021-03
  4 in total

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