Literature DB >> 33152602

Detect and correct bias in multi-site neuroimaging datasets.

Christian Wachinger1, Anna Rieckmann2, Sebastian Pölsterl3.   

Abstract

The desire to train complex machine learning algorithms and to increase the statistical power in association studies drives neuroimaging research to use ever-larger datasets. The most obvious way to increase sample size is by pooling scans from independent studies. However, simple pooling is often ill-advised as selection, measurement, and confounding biases may creep in and yield spurious correlations. In this work, we combine 35,320 magnetic resonance images of the brain from 17 studies to examine bias in neuroimaging. In the first experiment, Name That Dataset, we provide empirical evidence for the presence of bias by showing that scans can be correctly assigned to their respective dataset with 71.5% accuracy. Given such evidence, we take a closer look at confounding bias, which is often viewed as the main shortcoming in observational studies. In practice, we neither know all potential confounders nor do we have data on them. Hence, we model confounders as unknown, latent variables. Kolmogorov complexity is then used to decide whether the confounded or the causal model provides the simplest factorization of the graphical model. Finally, we present methods for dataset harmonization and study their ability to remove bias in imaging features. In particular, we propose an extension of the recently introduced ComBat algorithm to control for global variation across image features, inspired by adjusting for unknown population stratification in genetics. Our results demonstrate that harmonization can reduce dataset-specific information in image features. Further, confounding bias can be reduced and even turned into a causal relationship. However, harmonization also requires caution as it can easily remove relevant subject-specific information. Code is available at https://github.com/ai-med/Dataset-Bias.
Copyright © 2020 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Bias; Big data; Causal inference; Harmonization; MRI

Mesh:

Year:  2020        PMID: 33152602     DOI: 10.1016/j.media.2020.101879

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  10 in total

1.  Statistical quantification of confounding bias in machine learning models.

Authors:  Tamas Spisak
Journal:  Gigascience       Date:  2022-08-26       Impact factor: 7.658

2.  Data harmonisation for information fusion in digital healthcare: A state-of-the-art systematic review, meta-analysis and future research directions.

Authors:  Yang Nan; Javier Del Ser; Simon Walsh; Carola Schönlieb; Michael Roberts; Ian Selby; Kit Howard; John Owen; Jon Neville; Julien Guiot; Benoit Ernst; Ana Pastor; Angel Alberich-Bayarri; Marion I Menzel; Sean Walsh; Wim Vos; Nina Flerin; Jean-Paul Charbonnier; Eva van Rikxoort; Avishek Chatterjee; Henry Woodruff; Philippe Lambin; Leonor Cerdá-Alberich; Luis Martí-Bonmatí; Francisco Herrera; Guang Yang
Journal:  Inf Fusion       Date:  2022-06       Impact factor: 17.564

3.  Population heterogeneity in clinical cohorts affects the predictive accuracy of brain imaging.

Authors:  Oualid Benkarim; Casey Paquola; Bo-Yong Park; Valeria Kebets; Seok-Jun Hong; Reinder Vos de Wael; Shaoshi Zhang; B T Thomas Yeo; Michael Eickenberg; Tian Ge; Jean-Baptiste Poline; Boris C Bernhardt; Danilo Bzdok
Journal:  PLoS Biol       Date:  2022-04-29       Impact factor: 9.593

Review 4.  ENIGMA HALFpipe: Interactive, reproducible, and efficient analysis for resting-state and task-based fMRI data.

Authors:  Lea Waller; Susanne Erk; Elena Pozzi; Yara J Toenders; Courtney C Haswell; Marc Büttner; Paul M Thompson; Lianne Schmaal; Rajendra A Morey; Henrik Walter; Ilya M Veer
Journal:  Hum Brain Mapp       Date:  2022-03-19       Impact factor: 5.399

5.  Embracing the disharmony in medical imaging: A Simple and effective framework for domain adaptation.

Authors:  Rongguang Wang; Pratik Chaudhari; Christos Davatzikos
Journal:  Med Image Anal       Date:  2021-11-26       Impact factor: 8.545

6.  Deep learning-based unlearning of dataset bias for MRI harmonisation and confound removal.

Authors:  Nicola K Dinsdale; Mark Jenkinson; Ana I L Namburete
Journal:  Neuroimage       Date:  2020-12-30       Impact factor: 6.556

7.  A multi-scanner neuroimaging data harmonization using RAVEL and ComBat.

Authors:  Mahbaneh Eshaghzadeh Torbati; Davneet S Minhas; Ghasan Ahmad; Erin E O'Connor; John Muschelli; Charles M Laymon; Zixi Yang; Ann D Cohen; Howard J Aizenstein; William E Klunk; Bradley T Christian; Seong Jae Hwang; Ciprian M Crainiceanu; Dana L Tudorascu
Journal:  Neuroimage       Date:  2021-11-01       Impact factor: 6.556

Review 8.  Machine learning for medical imaging: methodological failures and recommendations for the future.

Authors:  Gaël Varoquaux; Veronika Cheplygina
Journal:  NPJ Digit Med       Date:  2022-04-12

9.  AbdomenNet: deep neural network for abdominal organ segmentation in epidemiologic imaging studies.

Authors:  Anne-Marie Rickmann; Jyotirmay Senapati; Oksana Kovalenko; Annette Peters; Fabian Bamberg; Christian Wachinger
Journal:  BMC Med Imaging       Date:  2022-09-17       Impact factor: 2.795

10.  Accelerated functional brain aging in major depressive disorder: evidence from a large scale fMRI analysis of Chinese participants.

Authors:  Yunsong Luo; Wenyu Chen; Jiang Qiu; Tao Jia
Journal:  Transl Psychiatry       Date:  2022-09-21       Impact factor: 7.989

  10 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.