scholarly journals Association of PvuII and XbaI polymorphisms on estrogen receptor alpha (ESR1) gene to changes into serum lipid profile of post-menopausal women: Effects of aging, body mass index and breast cancer incidence

PLoS ONE ◽  
2017 ◽  
Vol 12 (2) ◽  
pp. e0169266 ◽  
Author(s):  
Neuza Felix Gomes-Rochette ◽  
Letícia Soncini Souza ◽  
Bruno Otoni Tommasi ◽  
Diego França Pedrosa ◽  
Sérgio Ragi Eis ◽  
...  
2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Georgios Aivaliotis ◽  
Jan Palczewski ◽  
Rebecca Atkinson ◽  
Janet E. Cade ◽  
Michelle A. Morris

AbstractSurvival analysis with cohort study data has been traditionally performed using Cox proportional hazards models. Random survival forests (RSFs), a machine learning method, now present an alternative method. Using the UK Women’s Cohort Study (n = 34,493) we evaluate two methods: a Cox model and an RSF, to investigate the association between Body Mass Index and time to breast cancer incidence. Robustness of the models were assessed by cross validation and bootstraping. Histograms of bootstrap coefficients are reported. C-Indices and Integrated Brier Scores are reported for all models. In post-menopausal women, the Cox model Hazard Ratios (HR) for Overweight (OW) and Obese (O) were 1.25 (1.04, 1.51) and 1.28 (0.98, 1.68) respectively and the RSF Odds Ratios (OR) with partial dependence on menopause for OW and O were 1.34 (1.31, 1.70) and 1.45 (1.42, 1.48). HR are non-significant results. Only the RSF appears confident about the effect of weight status on time to event. Bootstrapping demonstrated Cox model coefficients can vary significantly, weakening interpretation potential. An RSF was used to produce partial dependence plots (PDPs) showing OW and O weight status increase the probability of breast cancer incidence in post-menopausal women. All models have relatively low C-Index and high Integrated Brier Score. The RSF overfits the data. In our study, RSF can identify complex non-proportional hazard type patterns in the data, and allow more complicated relationships to be investigated using PDPs, but it overfits limiting extrapolation of results to new instances. Moreover, it is less easily interpreted than Cox models. The value of survival analysis remains paramount and therefore machine learning techniques like RSF should be considered as another method for analysis.


PLoS ONE ◽  
2014 ◽  
Vol 9 (1) ◽  
pp. e87224 ◽  
Author(s):  
Jing Li ◽  
Yuan Huang ◽  
Bao-Ning Zhang ◽  
Jin-Hu Fan ◽  
Rong Huang ◽  
...  

Author(s):  
Lore Lapeire ◽  
Hannelore Denys ◽  
Véronique Cocquyt ◽  
Olivier De Wever

AbstractSince the discovery of leptin in 1994, our vision of adipose tissue as a static organ regulating mainly lipid storage and release has been completely overthrown, and adipose tissue is now seen as an active and integral organ in human physiology. In the past years, extensive research has tremendously given us more insights in the mechanisms and pathways involved not only in normal but also in ‘sick’ adipose tissue, for example, in obesity and lipodystrophy. With growing evidence of a link between obesity and several types of cancer, research focusing on the interaction between adipose tissue and cancer has begun to unravel the interesting but complex multi-lateral communication between the different players. With breast cancer as one of the first cancer types where a positive correlation between obesity and breast cancer incidence and prognosis in post-menopausal women was found, we have focused this review on the paracrine and endocrine role of adipose tissue in breast cancer initiation and progression. As important inter-species differences in adipose tissue occur, we mainly selected human adipose tissue- and breast cancer-based studies with a short reflection on therapeutic possibilities. This review is part of the special issue on “Adiposopathy in Cancer and (Cardio)Metabolic Diseases”.


2016 ◽  
Vol 27 ◽  
pp. ix24
Author(s):  
N.A. Jadoon ◽  
M. Hussain ◽  
F.U. Sulehri ◽  
A. Zafar ◽  
A. Ijaz

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