Literature DB >> 26163648

Use of an Artificial Neural Network to Construct a Model of Predicting Deep Fungal Infection in Lung Cancer Patients.

Jian Chen1, Jie Chen, Hong-Yan Ding, Qin-Shi Pan, Wan-Dong Hong, Gang Xu, Fang-You Yu, Yu-Min Wang.   

Abstract

BACKGROUND: The statistical methods to analyze and predict the related dangerous factors of deep fungal infection in lung cancer patients were several, such as logic regression analysis, meta-analysis, multivariate Cox proportional hazards model analysis, retrospective analysis, and so on, but the results are inconsistent.
MATERIALS AND METHODS: A total of 696 patients with lung cancer were enrolled. The factors were compared employing Student's t-test or the Mann-Whitney test or the Chi-square test and variables that were significantly related to the presence of deep fungal infection selected as candidates for input into the final artificial neural network analysis (ANN) model. The receiver operating characteristic (ROC) and area under curve (AUC) were used to evaluate the performance of the artificial neural network (ANN) model and logistic regression (LR) model.
RESULTS: The prevalence of deep fungal infection from lung cancer in this entire study population was 32.04%(223/696), deep fungal infections occur in sputum specimens 44.05% (200/454). The ratio of candida albicans was 86.99% (194/223) in the total fungi. It was demonstrated that older (≥65 years), use of antibiotics, low serum albumin concentrations (≤37.18 g /L), radiotherapy, surgery, low hemoglobin hyperlipidemia (≤93.67 g /L), long time of hospitalization (≥14 days) were apt to deep fungal infection and the ANN model consisted of the seven factors. The AUC of ANN model (0.829±0.019) was higher than that of LR model (0.756±0.021).
CONCLUSIONS: The artificial neural network model with variables consisting of age, use of antibiotics, serum albumin concentrations, received radiotherapy, received surgery, hemoglobin, time of hospitalization should be useful for predicting the deep fungal infection in lung cancer.

Entities:  

Mesh:

Year:  2015        PMID: 26163648     DOI: 10.7314/apjcp.2015.16.12.5095

Source DB:  PubMed          Journal:  Asian Pac J Cancer Prev        ISSN: 1513-7368


  4 in total

1.  An overview of the use of artificial neural networks in lung cancer research.

Authors:  Luca Bertolaccini; Piergiorgio Solli; Alessandro Pardolesi; Antonello Pasini
Journal:  J Thorac Dis       Date:  2017-04       Impact factor: 2.895

2.  Identification of COVID-19 samples from chest X-Ray images using deep learning: A comparison of transfer learning approaches.

Authors:  Md Mamunur Rahaman; Chen Li; Yudong Yao; Frank Kulwa; Mohammad Asadur Rahman; Qian Wang; Shouliang Qi; Fanjie Kong; Xuemin Zhu; Xin Zhao
Journal:  J Xray Sci Technol       Date:  2020       Impact factor: 1.535

3.  Characteristics of nosocomial infection and its effects on the survival of chemotherapy patients with advanced non-small cell lung cancer.

Authors:  Lili Wang; Yan Li; Xia Zhang; Hongxia Li
Journal:  Oncol Lett       Date:  2017-10-05       Impact factor: 2.967

Review 4.  Deep Learning in Medical Imaging: General Overview.

Authors:  June-Goo Lee; Sanghoon Jun; Young-Won Cho; Hyunna Lee; Guk Bae Kim; Joon Beom Seo; Namkug Kim
Journal:  Korean J Radiol       Date:  2017-05-19       Impact factor: 3.500

  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.