Mapping variants in thyroid hormone transporter MCT8 to disease severity by genomic, phenotypic, functional, structural and deep learning integration

Abstract

Predicting and quantifying phenotypic consequences of genetic variants in rare disorders is a major challenge, particularly pertinent for ‘actionable’ genes such as thyroid hormone transporter MCT8 (encoded by the X-linked SLC16A2 gene), where loss-of-function (LoF) variants cause a rare neurodevelopmental and (treatable) metabolic disorder in males. The combination of deep phenotyping data with functional and computational tests and with outcomes in population cohorts, enabled us to: (i) identify the genetic aetiology of divergent clinical phenotypes of MCT8 deficiency with genotype-phenotype relationships present across survival and 24 out of 32 disease features; (ii) demonstrate a mild phenocopy in ~400,000 individuals with common genetic variants in MCT8; (iii) assess therapeutic effectiveness, which did not differ among LoF-categories; (iv) advance structural insights in normal and mutated MCT8 by delineating seven critical functional domains; (v) create a pathogenicity-severity MCT8 variant classifier that accurately predicted pathogenicity (AUC:0.91) and severity (AUC:0.86) for 8151 variants. Our information-dense mapping provides a generalizable approach to advance multiple dimensions of rare genetic disorders.

Overview publication

TitleMapping variants in thyroid hormone transporter MCT8 to disease severity by genomic, phenotypic, functional, structural and deep learning integration
DateJanuary 20th, 2026
Issue nameNature Communications
Issue numberv16.1
DOI10.1038/s41467-025-56628-w
AuthorsGroeneweg S, van Geest FS, Martín M, Dias M, Frazer J, Medina-Gomez C, Sterenborg RBTM, Wang H, Dolcetta-Capuzzo A, de Rooij LJ, Teumer A, Abaci A, van den Akker ELT, Ambegaonkar GP, Armour CM, Bacos I, Bakhtiani P, Barca D, Bauer AJ, van den Berg SAA, van den Berge A, Bertini E, van Beynum IM, Brunetti-Pierri N, Brunner D, Cappa M, Cappuccio G, Castellotti B, Castiglioni C, Chatterjee K, Chesover A, Christian P, Coenen-van der Spek J, de Coo IFM, Coutant R, Craiu D, Crock P, DeGoede C, Demir K, Dewey C, Dica A, Dimitri P, Dremmen MHG, Dubey R, Enderli A, Fairchild J, Gallichan J, Garibaldi L, George B, Gevers EF, Greenup E, Hackenberg A, Halász Z, Heinrich B, Hurst AC, Huynh T, Isaza AR, Klosowska A, van der Knoop MM, Konrad D, Koolen DA, Krude H, Kulkarni A, Laemmle A, LaFranchi SH, Lawson-Yuen A, Lebl J, Leeuwenburgh S, Linder-Lucht M, López Martí A, Lorea CF, Lourenço CM, Lunsing RJ, Lyons G, Malikova JK, Mancilla EE, McCormick KL, McGowan A, Mericq V, Lora FM, Moran C, Muller KE, Nicol LE, Oliver-Petit I, Paone L, Paul PG, Polak M, Porta F, Poswar FO, Reinauer C, Rozenkova K, Seckold R, Seven Menevse T, Simm P, Simon A, Singh Y, Spada M, Stals MAM, Stegenga MT, Stoupa A, Subramanian GM, Szeifert L, Tonduti D, Turan S, Vanderniet J, van der Walt A, Wémeau J, van Wermeskerken A, Wierzba J, de Wit MY, Wolf NI, Wurm M, Zibordi F, Zung A, Zwaveling-Soonawala N, Rivadeneira F, Meima ME, Marks DS, Nicola JP, Chen C, Medici M & Visser WE
MTGsMTG8
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