PLoS ONE (Jan 2014)

Impact of uncertainties in exposure assessment on estimates of thyroid cancer risk among Ukrainian children and adolescents exposed from the Chernobyl accident.

  • Mark P Little,
  • Alexander G Kukush,
  • Sergii V Masiuk,
  • Sergiy Shklyar,
  • Raymond J Carroll,
  • Jay H Lubin,
  • Deukwoo Kwon,
  • Alina V Brenner,
  • Mykola D Tronko,
  • Kiyohiko Mabuchi,
  • Tetiana I Bogdanova,
  • Maureen Hatch,
  • Lydia B Zablotska,
  • Valeriy P Tereshchenko,
  • Evgenia Ostroumova,
  • André C Bouville,
  • Vladimir Drozdovitch,
  • Mykola I Chepurny,
  • Lina N Kovgan,
  • Steven L Simon,
  • Victor M Shpak,
  • Ilya A Likhtarev

DOI
https://doi.org/10.1371/journal.pone.0085723
Journal volume & issue
Vol. 9, no. 1
p. e85723

Abstract

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The 1986 accident at the Chernobyl nuclear power plant remains the most serious nuclear accident in history, and excess thyroid cancers, particularly among those exposed to releases of iodine-131 remain the best-documented sequelae. Failure to take dose-measurement error into account can lead to bias in assessments of dose-response slope. Although risks in the Ukrainian-US thyroid screening study have been previously evaluated, errors in dose assessments have not been addressed hitherto. Dose-response patterns were examined in a thyroid screening prevalence cohort of 13,127 persons aged <18 at the time of the accident who were resident in the most radioactively contaminated regions of Ukraine. We extended earlier analyses in this cohort by adjusting for dose error in the recently developed TD-10 dosimetry. Three methods of statistical correction, via two types of regression calibration, and Monte Carlo maximum-likelihood, were applied to the doses that can be derived from the ratio of thyroid activity to thyroid mass. The two components that make up this ratio have different types of error, Berkson error for thyroid mass and classical error for thyroid activity. The first regression-calibration method yielded estimates of excess odds ratio of 5.78 Gy(-1) (95% CI 1.92, 27.04), about 7% higher than estimates unadjusted for dose error. The second regression-calibration method gave an excess odds ratio of 4.78 Gy(-1) (95% CI 1.64, 19.69), about 11% lower than unadjusted analysis. The Monte Carlo maximum-likelihood method produced an excess odds ratio of 4.93 Gy(-1) (95% CI 1.67, 19.90), about 8% lower than unadjusted analysis. There are borderline-significant (p = 0.101-0.112) indications of downward curvature in the dose response, allowing for which nearly doubled the low-dose linear coefficient. In conclusion, dose-error adjustment has comparatively modest effects on regression parameters, a consequence of the relatively small errors, of a mixture of Berkson and classical form, associated with thyroid dose assessment.