C. LOPEZ, R. BOSCH, A. KORZYNSKA, M. GARCIA-ROJO, G. BUENO, J. GARCIA-FONTGIVELL, S. GONZALEZ, A. NAVARRO, E. COLON, J. RIBES, L. ROSZKOWIAK, D. MATA, M. ARENAS, J. GOMEZ, A. ROSO, M. BERENGUER, S. REVERTE-VILLARROYA, M. LLOBERA, J. BAUCELLS and M. LEJEUNE
Breast Cancer. 2022 Jul 1; . doi:10.1007/s12282-022-01336-2; PMID:35137329
Background The foremost cause of death of breast cancer (BC) patients is metastasis, and the first site to which BC predominantly metastasizes is the axillary lymph node (ALN). Thus, ALN status is a key prognostic indicator at diagnosis. The immune system has an essential role in cancer progression and dissemination, so its evaluation in ALNs could have significant applications. In the present study we aimed to investigate the association of clinical-pathological and immune variables in the primary tumour and non-metastatic ALNs (ALNs(-)) of a cohort of luminal A and triple-negative BC (TNBC) patients with cancer-specific survival (CSS) and time to progression (TTP). Methods We analysed the differences in the variables between patients with different outcomes, created univariate and multivariate Cox regression models, validated them by bootstrapping and multiple imputation of missing data techniques, and used Kaplan-Meier survival curves for a 10-years follow-up. Results We found some clinical-pathological variables at diagnosis (tumour diameter, TNBC molecular profile and presence of ALN metastasis), and the levels of several immune markers in the two studied sites, to be associated with worse CSS and TTP. Nevertheless, only CD68 and CD83 in ALNs(-) were confirmed as independent prognostic factors for TTP. Conclusions The study identified the importance of macrophage and dendritic cell markers as prognostic factors of relapse for BC. We highlight the importance of studying the immune response in ALNs(-), which could be relevant to the prediction of BC patients’ outcome.
R. FERNANDEZ, C. URGELL, J. VICENTE and G. PERA
ATENCION PRIMARIA. 2022 Jul 1; . doi:10.1016/j.aprim.2022.102371; PMID:35636020
A. MA, G. PERA, M. PEREZ, M. NIELSEN, M. KARSDAL, D. LEEMING, C. EXPOSITO, A. MARTINEZ-ESCUDE, I. GRAUPERA, M. THIELE, A. KRAG, N. FABRELLAS, L. CABALLERIA and P. GINES
2022 Jul 1;
R. DACOSTA-AGUAYO, N. LAMONJA-VICENTE, C. CHACON, L. CARRASCO-RIBELLES, P. MONTERO-ALIA, A. COSTA-GARRIDO, R. GARCIA-SIERRA, V. LOPEZ-LIFANTE, E. MORENO-GABRIEL, M. MASSANELLA, J. PUIG, J. MUNOZ-MORENO, L. MATEU, A. PRATS, C. RODRIGUEZ, M. MATARO, J. PRADO, E. MARTINEZ-CACERES, C. VIOLAN and P. TORAN-MONSERRAT
Vaccines. 2022 Jun 1; . doi:10.3390/vaccines10060849; PMID:35746457
The diagnosis of the post-COVID condition is usually achieved by excluding other diseases; however, cognitive changes are often found in the post-COVID disorder. Therefore, monitoring and treating the recovery from the post-COVID condition is necessary to establish biomarkers to guide the diagnosis of symptoms, including cognitive impairment. Our study employs a prospected cohort and nested case-control design with mixed methods, including statistical analyses, interviews, and focus groups. Our main aim is to identify biomarkers (functional and structural neural changes, inflammatory and immune status, vascular and vestibular signs and symptoms) easily applied in primary care to detect cognitive changes in post-COVID cases. The results will open up a new line of research to inform diagnostic and therapeutic decisions with special considerations for cognitive impairment in the post-COVID condition.
E. PARRA, A. DELGADO, L. CARRASCO-RIBELLES, I. GIGLIOLI, J. MARIN-MORALES, C. GIGLIO and M. RAYA
Frontiers in Psychology. 2022 May 31; . doi:10.3389/fpsyg.2022.864266; PMID:35712148
The aim of this study was to evaluate the viability of a new selection procedure based on machine learning (ML) and virtual reality (VR). Specifically, decision-making behaviours and eye-gaze patterns were used to classify individuals based on their leadership styles while immersed in virtual environments that represented social workplace situations. The virtual environments were designed using an evidence-centred design approach. Interaction and gaze patterns were recorded in 83 subjects, who were classified as having either high or low leadership style, which was assessed using the Multifactor leadership questionnaire. A ML model that combined behaviour outputs and eye-gaze patterns was developed to predict subjects’ leadership styles (high vs low). The results indicated that the different styles could be differentiated by eye-gaze patterns and behaviours carried out during immersive VR. Eye-tracking measures contributed more significantly to this differentiation than behavioural metrics. Although the results should be taken with caution as the small sample does not allow generalization of the data, this study illustrates the potential for a future research roadmap that combines VR, implicit measures, and ML for personnel selection.