2015
DOI: 10.1515/labmed-2015-0033
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Biomarker – vom Sein und Wesen

Abstract: Zusammenfassung:Biomarker, ein inzwischen geradezu inflationär verwendeter Begriff! Während in den vergangenen Jahrzehnten die Bezeichnung „Marker“ vor allem mit Tumorerkrankungen und deren klinisch-chemischer Diagnostik verbunden war, hat die „-omics“-Welle der letzten Dekade eine Unmenge an neuen „Markern“ für alles und jedes in die medizinische Literatur gespült. Insbesondere der unkritische Umgang mit jenen Markern und die Unerfahrenheit derjenigen, die durch neue Techniken in vormals rein naturwissenschaf… Show more

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Cited by 2 publications
(5 citation statements)
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“…Although lab requests usually should follow uniform diagnostic paths, their patterns are frequently highly variable–between disciplines, between clinics, and between physicians. Open “menu” request systems without digital expert systems or administrative restrictions facilitate the selection of favorite sets of “biomarkers”, that are neither mirrored by the actual guidelines nor by computational evidence [ 29 ], and even if published or hospital-based recommendations exist, they are scarcely followed [ 30 ]. The high degree of collinearity present in many routinely measured lab results not only points at tests potentially not additionally informative, but also blurs the contribution of a single parameter to a certain prediction or differentiation.…”
Section: Discussionmentioning
confidence: 99%
“…Although lab requests usually should follow uniform diagnostic paths, their patterns are frequently highly variable–between disciplines, between clinics, and between physicians. Open “menu” request systems without digital expert systems or administrative restrictions facilitate the selection of favorite sets of “biomarkers”, that are neither mirrored by the actual guidelines nor by computational evidence [ 29 ], and even if published or hospital-based recommendations exist, they are scarcely followed [ 30 ]. The high degree of collinearity present in many routinely measured lab results not only points at tests potentially not additionally informative, but also blurs the contribution of a single parameter to a certain prediction or differentiation.…”
Section: Discussionmentioning
confidence: 99%
“…Pancreatic cancer is not only a common and increasingly frequent [44], but also still a fatal disease, with a survival rate of 3-5% five years after diagnosis [45]. The conventional tumor marker, Carbohydrate Antigen 19-9 (CA19-9), as a blood group antigen not present in a significant proportion of the patients [46], shows insufficient diagnostic sensitivity and specificity (AUC 0.71), even in combination with the second-line tumor marker Carcinoembryonic Antigen (CEA, combined AUC 0.75) [47]. The need for better markers for screening and differential diagnosis is evident, as panceratic carcinoma would be principally curable if detected and identified very early in the course of the disease.…”
Section: Medical Interpretation Of Resultsmentioning
confidence: 99%
“…the so-called Warburg effect) [ 46 ], but also alters proteolytic activity [ 47 ]. Therefore, it might be naïve to expect a single marker capable to indicate presence, progression and exact type of the malignancy at once [ 48 ] 9– it might even be overly reductionistic to attribute these capabilities to a single model, even if it consists of several entities measured by different “- omics” technologies [ 43 ]. As Raftery states “basing inferences on a single “best” model as if the single selected model were true ignores model uncertainty, which can result in underestimating uncertainty about quantities of interest” [ 49 ], and the larger the “-omics” data-sets grow, the larger is the ‘probability, that there is not one “single best” predictive marker model, but instead several with comparable selectivity [ 48 ].…”
Section: Resultsmentioning
confidence: 99%
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