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result(s) for
"Sethi, Harshit"
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Reproductive and systemic lysozyme activities in chicken during experimental Salmonella Gallinarum infection: a comparative analysis between various egg-laying phases
by
Kaur, Paviter
,
Deshmukh, Sidhartha
,
Sethi, Harshit
in
Comparative analysis
,
Egg laying
,
Experimental infection
2022
Despite scientific advancement made in poultry farming, the problem of fowl typhoid is still persistent, discouraging significantly the economic prospects of poultry industry. New vaccines and vaccination approaches could make cost effective differences in control of such unbridled infection. Mucosal vaccination in the reproductive tract can stimulate protective localized innate immune response against fowl typhoid. The objective of the study was to investigate induction and dynamics of lysozyme activity within reproductive tract and systemic) circulation following experimental infection with
Salmonella
Gallinarum at various phases of egg laying viz., pre-egg laying (17–18 weeks), onset of egg-laying phase (19–20 weeks), and peak egg-laying phase (23–24 weeks). Chickens were either infected via intravenous or intravaginal route with10
7
CFU
−1
ml of
Salmonella
Gallinarum. Lysozyme activity was assessed by turbidimetric method employing suspension of
Micrococcus lysodeikticus
. Lysozyme activity increased during egg-laying phases (both at onset and peak egg-laying phase) and was high in reproductive wash following infection. Serum lysozyme activity was not significantly different between intravenously and intravaginally infected birds. Day 7 post-infection in each trial appeared to be crucial point for intravenously infected birds, where lysozyme activity in both the bodily secretions reduced to their lowest level.The maximum activity was noted during onset of egg laying with pronounced levels in intravaginal inoculates. Immune elicitation in reproductive tract is possible and can be enhanced by injecting suitable antigen amidst different egg-laying phases including
S
. Gallinarum infections.
Journal Article
Mic-hackathon 2024: hackathon on machine learning for electron and scanning probe microscopy
by
Mishra, Himanshu
,
Paul, Yogesh
,
Narasimha, Ganesh
in
electron microscopy
,
hackathon
,
machine learning
2025
Microscopy is one of the primary sources of information on materials structure and functionality at the nanometer and atomic scales. The data generated through microscopy is often contained in well-structured datasets, enriched with extensive metadata and sample histories, although not always with the same level of detail or storage format. The broad incorporation of data management plans by major funding agencies ensures the preservation and accessibility of this data. However, deriving insights from these rich datasets remains challenging due to the lack of established code ecosystems, standardized benchmarks, and integration strategies. Correspondingly, the efficiency of data usage is very low, and time expenditures at the analysis stage are enormous. In addition to post-acquisition data analysis, the emergence of application programming interfaces by major microscope manufacturers now creates opportunities for real-time ML-based data analytics to enable automated decision making, and particularly ML-agent controlled real-time microscope operation. Despite these opportunities, there is a significant gap in integrating the ML community with the broader microscopy community, limiting the value that these methods bring to physics and materials discovery and materials optimization. Hackathons address these challenges by fostering collaboration between ML experts and microscopy professionals, encouraging the development of innovative solutions that leverage ML for microscopy and preparing the workforce of the future both for microscopy-intensive domains areas, instrument manufacturers, and ML scientists interested in real world applications for fundamental research, materials optimization, and manufacturing. The hackathon generated benchmark datasets and digital twins of microscopes that further contribute to the development of the field and establish data analysis ecosystems. All the codes can be found at GitHub(https://github.com/KalininGroup/Mic-hackathon-2024-codes-publication/tree/1.0.0.1) and Zenodo (https://zenodo.org/records/15579940).
Journal Article
Mic-hackathon 2024: hackathon on machine learning for electron and scanning probe microscopy
by
Manganaris, Panayotis
,
Mishra, Himanshu
,
Paul, Yogesh
in
Application programming interface
,
Benchmarks
,
Data analysis
2025
Microscopy is one of the primary sources of information on materials structure and functionality at the nanometer and atomic scales. The data generated through microscopy is often contained in well-structured datasets, enriched with extensive metadata and sample histories, although not always with the same level of detail or storage format. The broad incorporation of data management plans by major funding agencies ensures the preservation and accessibility of this data. However, deriving insights from these rich datasets remains challenging due to the lack of established code ecosystems, standardized benchmarks, and integration strategies. Correspondingly, the efficiency of data usage is very low, and time expenditures at the analysis stage are enormous. In addition to post-acquisition data analysis, the emergence of application programming interfaces by major microscope manufacturers now creates opportunities for real-time ML-based data analytics to enable automated decision making, and particularly ML-agent controlled real-time microscope operation. Despite these opportunities, there is a significant gap in integrating the ML community with the broader microscopy community, limiting the value that these methods bring to physics and materials discovery and materials optimization. Hackathons address these challenges by fostering collaboration between ML experts and microscopy professionals, encouraging the development of innovative solutions that leverage ML for microscopy and preparing the workforce of the future both for microscopy-intensive domains areas, instrument manufacturers, and ML scientists interested in real world applications for fundamental research, materials optimization, and manufacturing. The hackathon generated benchmark datasets and digital twins of microscopes that further contribute to the development of the field and establish data analysis ecosystems. All the codes can be found at GitHub(https://github.com/KalininGroup/Mic-hackathon-2024-codes-publication/tree/1.0.0.1) and Zenodo (https://zenodo.org/records/15579940).
Journal Article
Automated structure discovery for Tip Enhanced Raman Spectroscopy
by
Junttila, Markus
,
Foster, Adam S
,
Silveira, Orlando J
in
Chemical fingerprinting
,
Datasets
,
Encoders-Decoders
2026
Tip-Enhanced Raman Spectroscopy (TERS) provides nanoscale chemical fingerprints alongside high-resolution topographic mapping of molecules, offering a powerful tool for materials discovery. However, TERS image datasets are challenging to interpret and typically demand time-consuming, computationally intensive quantum-chemistry calculations. To overcome this problem, we present an encoder-decoder model trained and evaluated on simulated TERS images of planar molecules, enabling direct prediction of molecular structures from spectral simulated data with high accuracy. Our approach demonstrates the feasibility of automating molecular structure identification from TERS images, bypassing traditional manual analysis. These findings provide a foundation for extending machine learning methods to experimental TERS datasets, potentially accelerating molecular discovery by integrating nanoscale spectroscopy with automated computational analysis.
Mic-hackathon 2024: Hackathon on Machine Learning for Electron and Scanning Probe Microscopy
by
Manganaris, Panayotis
,
Mishra, Himanshu
,
Paul, Yogesh
in
Benchmarks
,
Data management
,
Digital twins
2025
Microscopy is a primary source of information on materials structure and functionality at nanometer and atomic scales. The data generated is often well-structured, enriched with metadata and sample histories, though not always consistent in detail or format. The adoption of Data Management Plans (DMPs) by major funding agencies promotes preservation and access. However, deriving insights remains difficult due to the lack of standardized code ecosystems, benchmarks, and integration strategies. As a result, data usage is inefficient and analysis time is extensive. In addition to post-acquisition analysis, new APIs from major microscope manufacturers enable real-time, ML-based analytics for automated decision-making and ML-agent-controlled microscope operation. Yet, a gap remains between the ML and microscopy communities, limiting the impact of these methods on physics, materials discovery, and optimization. Hackathons help bridge this divide by fostering collaboration between ML researchers and microscopy experts. They encourage the development of novel solutions that apply ML to microscopy, while preparing a future workforce for instrumentation, materials science, and applied ML. This hackathon produced benchmark datasets and digital twins of microscopes to support community growth and standardized workflows. All related code is available at GitHub: https://github.com/KalininGroup/Mic-hackathon-2024-codes-publication/tree/1.0.0.1