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Research Project
SENS4Nano – Carbon modified electrochemical sensors for metal-containing engineered nanomaterials detection
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Beyond batch experiments: unveiling the potential of bimetallic carbon xerogels for catalytic wet peroxide oxidation of hospital wastewater in continuous mode
Publication . Silva, Adriano S.; Roman, Fernanda; Ribeiro, Rui; Garcia, Juan; Gomes, Helder
Single- and bimetallic carbon xerogels were prepared by incorporating iron and iron-cobalt precursors during their synthesis,
respectively, and tested in the catalytic wet peroxide oxidation (CWPO) of ibuprofen spiked into a simulated matrix in
batch mode. The bimetallic catalyst outperformed single and non-metallic catalyst by 25 and 85% after 360 min of reaction,
at mild temperature (30 °C). The best-performing catalyst was further used to treat hospital wastewater in a CWPO system
operating in full continuous mode. Process optimization was carried out considering different catalyst loads, temperatures,
and pH. The results obtained showed that the best conditions are initial pH 3, T = 80 °C, and a catalyst load of 35.4 mg cm−
3.
Having maintained values of chemical oxygen demand (COD) removals as high as 80% after 24 h of continuous operation,
the results herein reported revealed the high potential of the bimetallic carbon xerogel for CWPO of hospital wastewater
beyond conventional applications in batch mode. Despite some catalytic deactivation, the bimetallic carbon xerogel still
delivered a mineralization degree as high as 55% of the initial total organic carbon (TOC) content of the hospital wastewater
in the third 24-h cycle of CWPO in continuous mode of operation with successive catalyst reuse, as opposed to a 73% TOC
removal in the first cycle. Therefore, our results open prospects for the implementation of CWPO for hospital wastewater
treatment in continuous mode of operation.
A Reliable Molecular Diagnostic Tool for CA90 (Castanea sativa × Castanea crenata) Hybrid Identification Through SSR
Publication . Yussif, Toufiq Soale; Cruz, Nadine Evora da; Coelho, Valentim; Gouveia, Maria Eugénia; Choupina, Altino Branco
Chestnut trees are an essential source of both food and timber. However, the severe threats from invasive pests and diseases compromise their existence and productivity. In Europe, chestnut hybridization programs have been initiated to produce resilient rootstocks in response to ink disease. However, the gap in the identification of these hybrid plants is typically based on field observations and morphological features and remains a challenge. Our study presents a marker set for distinguishing between chestnut hybrid CA90 (Castanea sativa × Castanea crenata), a hybrid with demonstrated resistance to Phytophthora cinnamomi, and other varieties using microsatellite (SSR) markers and bioinformatics tools. We used 35 chestnut samples, including three CA90 controls, hybrids sampled within Portugal, with an aim to define the profiles of the chestnut hybrids and varieties in this study based on band patterns and SSR motifs. We selected and modified nine distinct SSR primers with null allelic features from 43 already developed simple sequence repeat (SSR) markers. PCR amplification and agarose gel electrophoresis were used to amplify and visualize the DNA bands. To confirm genetic variations, 27 amplified bands were sequenced by Sanger sequencing. This analysis identified 31 SSRs across 22 SSR-containing sequences, with trinucleotide (67.74%) repeats being the most common, followed by repeats of dinucleotide (22.58%), mononucleotide (6.45%), and hexanucleotide (3.23%). A total of 18 alleles were observed for the nine loci. The alleles ranged from one to three per locus for the 35 samples. The novel locus CP4 could only be found in CA90 hybrids. This tool can aid in identifying and selecting disease-resistant hybrids, thereby contributing to chestnut production and management strategies.
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Funding agency
Fundação para a Ciência e a Tecnologia
Funding programme
CEEC IND5ed
Funding Award Number
2022.04079.CEECIND/CP1733/CT0006