TY - JOUR
T1 - Joint, multifaceted genomic analysis enables diagnosis of diverse, ultra-rare monogenic presentations
AU - Undiagnosed Diseases Network
AU - Kobren, Shilpa Nadimpalli
AU - Moldovan, Mikhail A.
AU - Reimers, Rebecca
AU - Traviglia, Daniel
AU - Li, Xinyun
AU - Barnum, Danielle
AU - Veit, Alexander
AU - Corona, Rosario I.
AU - Carvalho Neto, George de V.
AU - Willett, Julian
AU - Berselli, Michele
AU - Ronchetti, William
AU - Nelson, Stanley F.
AU - Martinez-Agosto, Julian A.
AU - Sherwood, Richard
AU - Krier, Joel
AU - Kohane, Isaac S.
AU - Zuchner, Stephan
AU - Zimmermann, Michael
AU - Zhang, Hui
AU - Yamamoto, Shinya
AU - Xu, Hua
AU - Xiao, Changrui
AU - Worthey, Elizabeth A.
AU - Worley, Kim
AU - Wood, Heidi
AU - Wolfe, Lynne A.
AU - Wilk, Brandon M.
AU - Wiel, Laurens
AU - Whitlock, Jordan
AU - Wheeler, Matthew T.
AU - Westerfield, Monte
AU - Wener, Mark
AU - Welt, Corrine K.
AU - Wegner, Daniel
AU - Ware, Stephanie M.
AU - Ward, Alistair
AU - Ward, Isum
AU - Ward, Patricia A.
AU - Wangler, Michael F.
AU - Wang, Emily
AU - Wambach, Jennifer
AU - Walley, Nicole M.
AU - Walker, Melissa
AU - Wahl, Colleen E.
AU - Shuman, Saskia
AU - Jen, Joanna
AU - Gelb, Bruce
AU - Cunningham-Rundles, Charlotte
AU - Balwani, Manisha
N1 - Publisher Copyright:
© The Author(s) 2025.
PY - 2025/12
Y1 - 2025/12
N2 - Genomics for rare disease diagnosis has advanced at a rapid pace due to our ability to perform in-depth analyses on individual patients with ultra-rare diseases. The increasing sizes of ultra-rare disease cohorts internationally newly enables cohort-wide analyses for new discoveries, but well-calibrated statistical genetics approaches for jointly analyzing these patients are still under development. The Undiagnosed Diseases Network (UDN) brings multiple clinical, research and experimental centers under the same umbrella across the United States to facilitate and scale case-based diagnostic analyses. Here, we present the first joint analysis of whole genome sequencing data of UDN patients across the network. We introduce new, well-calibrated statistical methods for prioritizing disease genes with de novo recurrence and compound heterozygosity. We also detect pathways enriched with candidate and known diagnostic genes. Our computational analysis, coupled with a systematic clinical review, recapitulated known diagnoses and revealed new disease associations. We further release a software package, RaMeDiES, enabling automated cross-analysis of deidentified sequenced cohorts for new diagnostic and research discoveries. Gene-level findings and variant-level information across the cohort are available in a public-facing browser (https://dbmi-bgm.github.io/udn-browser/). These results show that case-level diagnostic efforts should be supplemented by a joint genomic analysis across cohorts.
AB - Genomics for rare disease diagnosis has advanced at a rapid pace due to our ability to perform in-depth analyses on individual patients with ultra-rare diseases. The increasing sizes of ultra-rare disease cohorts internationally newly enables cohort-wide analyses for new discoveries, but well-calibrated statistical genetics approaches for jointly analyzing these patients are still under development. The Undiagnosed Diseases Network (UDN) brings multiple clinical, research and experimental centers under the same umbrella across the United States to facilitate and scale case-based diagnostic analyses. Here, we present the first joint analysis of whole genome sequencing data of UDN patients across the network. We introduce new, well-calibrated statistical methods for prioritizing disease genes with de novo recurrence and compound heterozygosity. We also detect pathways enriched with candidate and known diagnostic genes. Our computational analysis, coupled with a systematic clinical review, recapitulated known diagnoses and revealed new disease associations. We further release a software package, RaMeDiES, enabling automated cross-analysis of deidentified sequenced cohorts for new diagnostic and research discoveries. Gene-level findings and variant-level information across the cohort are available in a public-facing browser (https://dbmi-bgm.github.io/udn-browser/). These results show that case-level diagnostic efforts should be supplemented by a joint genomic analysis across cohorts.
UR - https://www.scopus.com/pages/publications/105013076026
U2 - 10.1038/s41467-025-61712-2
DO - 10.1038/s41467-025-61712-2
M3 - Article
C2 - 40770127
AN - SCOPUS:105013076026
SN - 2041-1723
VL - 16
JO - Nature Communications
JF - Nature Communications
IS - 1
M1 - 7267
ER -