Mendeley Data Showcase
Filter Results
148539 results
- Clinical and Dermoscopic Triage of head and neck Macules: The Role of Reflectance Confocal Microscopy in a Prospective Study of 2006 LesionsSupplementary Fig 1. Workflow illustrating tumors distribution according to dermoscopic, confocal and histologic diagnoses. Supplementary Fig 2. A) Dermoscopy showing brown pseudonetwork with defined borders, interpreted as solar lentigo. B-C) Reflectance confocal microscopy (RCM) revealing LM features, specifically: B) RCM at epidermal layer showing perifollicular and interfollicular dendritic cells. C) RCM at dermal-epidermal layer showing medusa-head like structure. Supplementary Fig 3. Double negative LM case: A) Dermoscopy showing multiple grey dots. B) RCM at epidermal layer showing honeycombed pattern with focal mottled pigmentation. C) RCM at dermal-epidermal layer showing abundant melanophages. Supplementary Fig 4. Double negative BCC case: A) Dermoscopy showing brown-red background. B) RCM at epidermal layer showing honeycombed pattern with focal mottled pigmentation. C) RCM at dermal-epidermal layer showing aspecific structures.
- CollectionSchool of Medicine and SurgeryResearch data related to the School of Medicine and Surgery of the University of Milano - Bicocca
- Holotomographic microscopy - Halting the Reverse Mode: NCX Inhibition as a Neuroprotective Strategy against Oxaliplatin-Induced Peripheral NeurotoxicityLive-cell holotomographic imaging of OHP-induced pathological changes in DRG neurons. These videos show primary adult mouse DRG neuronal cultures exposed to OHP at 7.5 or 25 µM. Refractive index-based imaging captures neurite fragmentation and degeneration, morphological features consistent with necroptosis, and autophagic vacuoles. Images were acquired using a 5 × 5 grid scan, with each grid measuring 90 × 90 µm, every 15 min for 28 h at 7 fps, from 24 to 52 h after OHP incubation.
- Survey datasets on consumer adoption of energy-efficient LED televisions and LED bulbs in BangladeshThese datasets contain survey responses collected to explore the underlying factors influencing consumer adoption of energy-efficient green products—specifically, LED Televisions and LED Bulbs. The data was gathered using structured questionnaires distributed to users of LED products. All measurement items assessing consumer perceptions and behavioral intentions were evaluated using a 5-point Likert scale, ranging from 1 (Strongly Disagree) to 5 (Strongly Agree). The repository includes two separate datasets: #LED TV Dataset: Comprises 408 valid responses evaluating the adoption of LED Televisions. #LED Bulb Dataset: Comprises 430 valid responses evaluating the adoption of LED Bulbs. The datasets capture variables across several established constructs related to technology adoption and consumer behavior, including: Performance Expectancy (PE), Effort Expectancy (EE), Role of Salesperson (RS), Facilitating Conditions (FC), Social Influence (SI), Hedonic Motivation (HM), Price Value (PV), Environmental Concern (EC), Personal Innovativeness (PI), Consumer Citizenship Behavior (CCB), and Behavioral Intention to Purchase (BIP).
- Redundancy-aware sampling for Boolean matrix factorizationIn the associated paper, we revisit a recently published method of data reduction for Boolean matrix factorization and demonstrate that its row-selection criterion is flawed: reversing the selection logic, replacing it by simple random sampling, or by a criterion based solely on the number of 1s in a row, all yield comparable or even better results. We further propose a new row-sampling method, based on a theoretically justified score reflecting guaranteed coverage combined with randomized tie-breaking, and show experimentally that it outperforms both the examined method and the baseline approaches, especially on data with low row redundancy. This data package contains supplementary coverage and runtime tables together with folders of PDF charts that complement the findings presented in the paper.
- Processed bacterial 16S and fungal ITS sequencing results from reconstructed mine soilsThis dataset contains processed bacterial 16S rRNA gene and fungal ITS sequencing results from reconstructed mine soil samples in the Tunlan mining area, Shanxi, China. The data include bacterial and fungal phylum-level relative abundance tables and alpha diversity indices for four soil reconstruction treatments at two soil depths.
- Factors Associated With Corticosteroid Tapering and Mortality in Severe Cutaneous Adverse Reactions: A Retrospective Cohort StudySupplementary methods, figures, and tables
- Apatite and zircon thermochronological data for granitic samples from Peninsular MalaysiaTable S1 Apatite U-Pb data for granitic samples from Peninsular Malaysia. Table S2 Apatite (U–Th)/He data for granitic samples from Peninsular Malaysia. Table S3 Zircon (U–Th)/He data for granitic samples from Peninsular Malaysia.
- Dataset for: Tumour antigen-specific antibody signatures as diagnostic biomarkers for melanoma
- Data for Bio-Digital Convergence and Sustainable Artificial Intelligence: Evaluating the Tools of the Jach'a Qh’anax Model in the Andean-Amazonian and Mesoamerican BioeconomyThis dataset and its complementary software tools form the empirical validation framework of the Jach'a Qh'anax Model Ecosystem. This project explores bio-digital convergence and the application of sustainable Artificial Intelligence (AI) within the bioeconomy of the Andean-Amazonian and Mesoamerican regions, specifically covering Bolivia, Mexico, Guatemala, Honduras, and El Salvador. The primary objective of the ecosystem is to mitigate technical information asymmetries and climate risks faced by traditional rural agricultural producers through decentralized climate sensors and mobile tools, while actively integrating indigenous and ancestral knowledge. The collected data evaluates technological adoption, algorithmic predictive accuracy, the substitution of traditional chemical inputs for bioeconomic practices, and the direct impact on household income stability and food security across 200 multi-country participants during the 2026 agricultural cycle.