Abstract 203P
Background
Tumor markers (TMs) are a heterogeneous group of molecules used in the diagnosis, prognosis, and follow-up of cancer patients. However, TMs present some drawbacks, like their low specificity, as their levels also increase in benign diseases, which can result in false positives (e.g. they are catabolized in the liver and excreted through the kidneys so, any pathology related with these organs could impact in their concentration, even above their upper reference limit). The objective of this study is to evaluate the efficacy of different algorithms that can detect most of benign diseases that can increase TMs levels together with an innovative MCED algorithm.
Methods
We studied a novel non-invasive EBLM test for MCED, developed to use 18 serum TMs and other analytes. Powered by public and proprietary machine learning (ML) algorithms, this diagnostic tool aims to accurately detect up to 42 solid tumors and 5 hematological malignancies. Additionally, it screens for up to 303 non-malignant diseases, many of which increase TMs’ concentration in the absence of neoplasia, as the Barcelona criteria of 1994 already suggested. This test comprises a computation of individual tests tailored to different diagnostic targets, some studies of which have been presented in ASCO 2022 (breast, colon) and ESMO 2024 (liver, lung, ovarian, prostate), from different clinical research studies conducted among the last 8 years. Besides, parallel and serial approximations were conducted to optimize overall sensitivity (Se) and specificity (Sp), respectively.
Results
For the 303 benign diseases screening, we achieved a final sample size (n) of 151,357 individuals and the results of Se, Sp, AUROC, PPV, and the NPV were 0.97, 0.95, 0.85, 0.97, and 0.96, respectively. For the MCED, we achieved an n of 192.090 individuals and the values of Se, Sp, AUROC, PPV, and NPV were 0.95, 0.73, 0.92, 0.77, and 0.93, respectively.
Conclusions
This data supports that integrating different laboratory analytes to identify diverse comorbidities helps to achieve higher sensitivity and specificity values to detect various cancer types using TMs. However, further research should be conducted to confirm these findings.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Kience Inc.
Disclosure
S.J. Calleja: Financial Interests, Personal, Ownership Interest: Kience Inc.. A. Roca: Financial Interests, Personal, Membership or affiliation: Blueberry Diagnotics SL. All other authors have declared no conflicts of interest.
Resources from the same session
213P - Constructing a high-definition patient-digital twin (PDT) in treatment-naïve women with advanced cancer
Presenter: Leonardo Garma
Session: Poster session 09
215P - Detection of MUTYH for the prognosis and chemotherapy responsiveness of patients with non-small cell lung cancer
Presenter: Chi Wai Wong
Session: Poster session 09
216P - β-catenin is a potential prognostic biomarker in uterine sarcoma
Presenter: Ying Cai
Session: Poster session 09
218P - Exploiting a unique glycosaminoglycan for novel pan-cancer therapies and diagnostics
Presenter: Mette Agerbæk
Session: Poster session 09
219P - The landscape and prognostic impact of germline HLA-A subtypes in patients with advanced solid cancers
Presenter: Kyrillus Shohdy
Session: Poster session 09
220P - The role of fucosyltransferase 1 (FUT1) in CRC as a putative prognostic and predictive biomarker
Presenter: Lorenz Pammer
Session: Poster session 09
221P - ANGPTL4's role in cancer: A meta analysis and bioinformatics exploration
Presenter: Osama Younis
Session: Poster session 09
222P - Artificial intelligence (AI) based prognostication from baseline computed tomography (CT) scans in a phase III advanced non-small cell lung cancer (aNSCLC) trial
Presenter: Omar Khan
Session: Poster session 09
224P - Lung cancer scRNA-seq analyses reveal potential mechanisms causing different efficacy of target therapy and immunotherapy between EGFR 19del and L858R lung adenocarcinoma
Presenter: Hao Wang
Session: Poster session 09