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Noninvasive detection of any-stage cancer using free glycosaminoglycans.

Sinisa BratulicAngelo LimetaSaeed DabestaniHelgi BirgissonGunilla EnbladKarin StålbergGöran HesselagerMichael HäggmanMartin HöglundOscar E SimonsonPeter StålbergHenrik LindmanAnna Bång-RudenstamMatias EkstrandGunjan KumarIlaria CavarrettaMassimo AlfanoFrancesco PellegrinoThomas Mandel-ClausenAli SalantiFrancesca MaccariFabio GaleottiNicola VolpiMads DaugaardMattias BeltingSven LundstamUlrika StiernerJan NymanBengt BergmanPer-Henrik D EdqvistMax LevinAlessia d'ArmaHenrik KjölhedeEric JonaschJens B NielsenFrancesco Gatto
Published in: Proceedings of the National Academy of Sciences of the United States of America (2022)
Cancer mortality is exacerbated by late-stage diagnosis. Liquid biopsies based on genomic biomarkers can noninvasively diagnose cancers. However, validation studies have reported ~10% sensitivity to detect stage I cancer in a screening population and specific types, such as brain or genitourinary tumors, remain undetectable. We investigated urine and plasma free glycosaminoglycan profiles (GAGomes) as tumor metabolism biomarkers for multi-cancer early detection (MCED) of 14 cancer types using 2,064 samples from 1,260 cancer or healthy subjects. We observed widespread cancer-specific changes in biofluidic GAGomes recapitulated in an in vivo cancer progression model. We developed three machine learning models based on urine ( N urine = 220 cancer vs. 360 healthy) and plasma ( N plasma = 517 vs. 425) GAGomes that can detect any cancer with an area under the receiver operating characteristic curve of 0.83-0.93 with up to 62% sensitivity to stage I disease at 95% specificity. Undetected patients had a 39 to 50% lower risk of death. GAGomes predicted the putative cancer location with 89% accuracy. In a validation study on a screening-like population requiring ≥ 99% specificity, combined GAGomes predicted any cancer type with poor prognosis within 18 months with 43% sensitivity (21% in stage I; N = 121 and 49 cases). Overall, GAGomes appeared to be powerful MCED metabolic biomarkers, potentially doubling the number of stage I cancers detectable using genomic biomarkers.
Keyphrases
  • papillary thyroid
  • squamous cell
  • poor prognosis
  • machine learning
  • cardiovascular disease
  • gene expression
  • dna methylation
  • peritoneal dialysis
  • prognostic factors
  • big data
  • quantum dots
  • genome wide