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author Wade, Kaitlin H.
Yarmolinsky, James
Giovannucci, Edward
Lewis, Sarah J.
Millwood, Iona Y.
Munafò, Marcus R.
Meddens, Fleur
Burrows, Kimberley
Bell, Joshua A.
Davies, Neil M.
Mariosa, Daniela
Kanerva, Noora
Vincent, Emma E.
Smith-Byrne, Karl
Guida, Florence
Gunter, Marc J.
Sanderson, Eleanor
Dudbridge, Frank
Burgess, Stephen
Cornelis, Marilyn C.
Richardson, Tom G.
Borges, Maria Carolina
Bowden, Jack
Hemani, Gibran
Cho, Yoonsu
Spiller, Wes
Richmond, Rebecca C.
Carter, Alice R.
Langdon, Ryan
Lawlor, Deborah A.
Walters, Robin G.
Vimaleswaran, Karani Santhanakrishnan
Anderson, Annie
Sandu, Meda R.
Tilling, Kate
Davey Smith, George
Martin, Richard M.
Relton, Caroline L.
author_facet Wade, Kaitlin H.
Yarmolinsky, James
Giovannucci, Edward
Lewis, Sarah J.
Millwood, Iona Y.
Munafò, Marcus R.
Meddens, Fleur
Burrows, Kimberley
Bell, Joshua A.
Davies, Neil M.
Mariosa, Daniela
Kanerva, Noora
Vincent, Emma E.
Smith-Byrne, Karl
Guida, Florence
Gunter, Marc J.
Sanderson, Eleanor
Dudbridge, Frank
Burgess, Stephen
Cornelis, Marilyn C.
Richardson, Tom G.
Borges, Maria Carolina
Bowden, Jack
Hemani, Gibran
Cho, Yoonsu
Spiller, Wes
Richmond, Rebecca C.
Carter, Alice R.
Langdon, Ryan
Lawlor, Deborah A.
Walters, Robin G.
Vimaleswaran, Karani Santhanakrishnan
Anderson, Annie
Sandu, Meda R.
Tilling, Kate
Davey Smith, George
Martin, Richard M.
Relton, Caroline L.
author_sort Wade, Kaitlin H.
collection PubMed
description Dietary factors are assumed to play an important role in cancer risk, apparent in consensus recommendations for cancer prevention that promote nutritional changes. However, the evidence in this field has been generated predominantly through observational studies, which may result in biased effect estimates because of confounding, exposure misclassification, and reverse causality. With major geographical differences and rapid changes in cancer incidence over time, it is crucial to establish which of the observational associations reflect causality and to identify novel risk factors as these may be modified to prevent the onset of cancer and reduce its progression. Mendelian randomization (MR) uses the special properties of germline genetic variation to strengthen causal inference regarding potentially modifiable exposures and disease risk. MR can be implemented through instrumental variable (IV) analysis and, when robustly performed, is generally less prone to confounding, reverse causation and measurement error than conventional observational methods and has different sources of bias (discussed in detail below). It is increasingly used to facilitate causal inference in epidemiology and provides an opportunity to explore the effects of nutritional exposures on cancer incidence and progression in a cost-effective and timely manner. Here, we introduce the concept of MR and discuss its current application in understanding the impact of nutritional factors (e.g., any measure of diet and nutritional intake, circulating biomarkers, patterns, preference or behaviour) on cancer aetiology and, thus, opportunities for MR to contribute to the development of nutritional recommendations and policies for cancer prevention. We provide applied examples of MR studies examining the role of nutritional factors in cancer to illustrate how this method can be used to help prioritise or deprioritise the evaluation of specific nutritional factors as intervention targets in randomised controlled trials. We describe possible biases when using MR, and methodological developments aimed at investigating and potentially overcoming these biases when present. Lastly, we consider the use of MR in identifying causally relevant nutritional risk factors for various cancers in different regions across the world, given notable geographical differences in some cancers. We also discuss how MR results could be translated into further research and policy. We conclude that findings from MR studies, which corroborate those from other well-conducted studies with different and orthogonal biases, are poised to substantially improve our understanding of nutritional influences on cancer. For such corroboration, there is a requirement for an interdisciplinary and collaborative approach to investigate risk factors for cancer incidence and progression.
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spelling pubmed-90103892022-05-02 Applying Mendelian randomization to appraise causality in relationships between nutrition and cancer Wade, Kaitlin H. Yarmolinsky, James Giovannucci, Edward Lewis, Sarah J. Millwood, Iona Y. Munafò, Marcus R. Meddens, Fleur Burrows, Kimberley Bell, Joshua A. Davies, Neil M. Mariosa, Daniela Kanerva, Noora Vincent, Emma E. Smith-Byrne, Karl Guida, Florence Gunter, Marc J. Sanderson, Eleanor Dudbridge, Frank Burgess, Stephen Cornelis, Marilyn C. Richardson, Tom G. Borges, Maria Carolina Bowden, Jack Hemani, Gibran Cho, Yoonsu Spiller, Wes Richmond, Rebecca C. Carter, Alice R. Langdon, Ryan Lawlor, Deborah A. Walters, Robin G. Vimaleswaran, Karani Santhanakrishnan Anderson, Annie Sandu, Meda R. Tilling, Kate Davey Smith, George Martin, Richard M. Relton, Caroline L. Cancer Causes Control Review Article Dietary factors are assumed to play an important role in cancer risk, apparent in consensus recommendations for cancer prevention that promote nutritional changes. However, the evidence in this field has been generated predominantly through observational studies, which may result in biased effect estimates because of confounding, exposure misclassification, and reverse causality. With major geographical differences and rapid changes in cancer incidence over time, it is crucial to establish which of the observational associations reflect causality and to identify novel risk factors as these may be modified to prevent the onset of cancer and reduce its progression. Mendelian randomization (MR) uses the special properties of germline genetic variation to strengthen causal inference regarding potentially modifiable exposures and disease risk. MR can be implemented through instrumental variable (IV) analysis and, when robustly performed, is generally less prone to confounding, reverse causation and measurement error than conventional observational methods and has different sources of bias (discussed in detail below). It is increasingly used to facilitate causal inference in epidemiology and provides an opportunity to explore the effects of nutritional exposures on cancer incidence and progression in a cost-effective and timely manner. Here, we introduce the concept of MR and discuss its current application in understanding the impact of nutritional factors (e.g., any measure of diet and nutritional intake, circulating biomarkers, patterns, preference or behaviour) on cancer aetiology and, thus, opportunities for MR to contribute to the development of nutritional recommendations and policies for cancer prevention. We provide applied examples of MR studies examining the role of nutritional factors in cancer to illustrate how this method can be used to help prioritise or deprioritise the evaluation of specific nutritional factors as intervention targets in randomised controlled trials. We describe possible biases when using MR, and methodological developments aimed at investigating and potentially overcoming these biases when present. Lastly, we consider the use of MR in identifying causally relevant nutritional risk factors for various cancers in different regions across the world, given notable geographical differences in some cancers. We also discuss how MR results could be translated into further research and policy. We conclude that findings from MR studies, which corroborate those from other well-conducted studies with different and orthogonal biases, are poised to substantially improve our understanding of nutritional influences on cancer. For such corroboration, there is a requirement for an interdisciplinary and collaborative approach to investigate risk factors for cancer incidence and progression. Springer International Publishing 2022-03-11 2022 /pmc/articles/PMC9010389/ /pubmed/35274198 http://dx.doi.org/10.1007/s10552-022-01562-1 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Review Article
Wade, Kaitlin H.
Yarmolinsky, James
Giovannucci, Edward
Lewis, Sarah J.
Millwood, Iona Y.
Munafò, Marcus R.
Meddens, Fleur
Burrows, Kimberley
Bell, Joshua A.
Davies, Neil M.
Mariosa, Daniela
Kanerva, Noora
Vincent, Emma E.
Smith-Byrne, Karl
Guida, Florence
Gunter, Marc J.
Sanderson, Eleanor
Dudbridge, Frank
Burgess, Stephen
Cornelis, Marilyn C.
Richardson, Tom G.
Borges, Maria Carolina
Bowden, Jack
Hemani, Gibran
Cho, Yoonsu
Spiller, Wes
Richmond, Rebecca C.
Carter, Alice R.
Langdon, Ryan
Lawlor, Deborah A.
Walters, Robin G.
Vimaleswaran, Karani Santhanakrishnan
Anderson, Annie
Sandu, Meda R.
Tilling, Kate
Davey Smith, George
Martin, Richard M.
Relton, Caroline L.
Applying Mendelian randomization to appraise causality in relationships between nutrition and cancer
title Applying Mendelian randomization to appraise causality in relationships between nutrition and cancer
title_full Applying Mendelian randomization to appraise causality in relationships between nutrition and cancer
title_fullStr Applying Mendelian randomization to appraise causality in relationships between nutrition and cancer
title_full_unstemmed Applying Mendelian randomization to appraise causality in relationships between nutrition and cancer
title_short Applying Mendelian randomization to appraise causality in relationships between nutrition and cancer
title_sort applying mendelian randomization to appraise causality in relationships between nutrition and cancer
topic Review Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9010389/
https://www.ncbi.nlm.nih.gov/pubmed/35274198
http://dx.doi.org/10.1007/s10552-022-01562-1
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