6533b827fe1ef96bd1287072

RESEARCH PRODUCT

Conventional and semi-automatic histopathological analysis of tumor cell content for multigene sequencing of lung adenocarcinoma

Steffen OrmannsMartin E. EichhornJonas LeichsenringDaniel KazdalMichael AllgäuerKatharina KriegsmannLudger FinkPeter SchirmacherJan BudcziesFabian StögbauerAnna-lena VolckmarWilko WeichertArne WarthMichael ThomasThomas MuleyMark KriegsmannRémi LonguespéeAlbrecht StenzingerMartin ReckEugen RempelPetros ChristopoulosJörg KriegsmannFelix J.f. HerthElke KohlwesHauke WinterCristiano OliveiraKerstin SingerMichael LeichsenringClaus Peter HeußelAlexander HarmsLuca TavernarSolange Peters

subject

0301 basic medicineOncologymedicine.medical_specialtyConcordanceTumor cellsurologic and male genital diseases03 medical and health sciences0302 clinical medicineInternal medicineMedicineLung cancerneoplasmsLungbusiness.industryMolecular pathologyDigital pathologymedicine.diseasefemale genital diseases and pregnancy complicationsddc:030104 developmental biologymedicine.anatomical_structureOncology030220 oncology & carcinogenesisAdenocarcinomaOriginal ArticleSemi automaticbusiness

description

BACKGROUND: Targeted genetic profiling of tissue samples is paramount to detect druggable genetic aberrations in patients with non-squamous non-small cell lung cancer (NSCLC). Accurate upfront estimation of tumor cell content (TCC) is a crucial pre-analytical step for reliable testing and to avoid false-negative results. As of now, TCC is usually estimated on hematoxylin-eosin (H&E) stained tissue sections by a pathologist, a methodology that may be prone to substantial intra- and interobserver variability. Here we the investigate suitability of digital pathology for TCC estimation in a clinical setting by evaluating the concordance between semi-automatic and conventional TCC quantification. METHODS: TCC was analyzed in 120 H&E and thyroid transcription factor 1 (TTF-1) stained high-resolution images by 19 participants with different levels of pathological expertise as well as by applying two semi-automatic digital pathology image analysis tools (HALO and QuPath). RESULTS: Agreement of TCC estimations [intra-class correlation coefficients (ICC)] between the two software tools (H&E: 0.87; TTF-1: 0.93) was higher compared to that between conventional observers (0.48; 0.47). Digital TCC estimations were in good agreement with the average of human TCC estimations (0.78; 0.96). Conventional TCC estimators tended to overestimate TCC, especially in H&E stainings, in tumors with solid patterns and in tumors with an actual TCC close to 50%. CONCLUSIONS: Our results determine factors that influence TCC estimation. Computer-assisted analysis can improve the accuracy of TCC estimates prior to molecular diagnostic workflows. In addition, we provide a free web application to support self-training and quality improvement initiatives at other institutions.

10.21037/tlcr-20-1168https://europepmc.org/articles/PMC8107748/