What is he best known for?
The fields of study Winfried F. Pickl is best known for:
- Immune system
- Antibody
- Gene
Winfried F. Pickl carries out multidisciplinary research, doing studies in Immunology and Hypogammaglobulinemia.
Winfried F. Pickl integrates Hypogammaglobulinemia and Immunology in his research.
Winfried F. Pickl brings together Flow cytometry and Cell sorting to produce work in his papers.
While working in this field, he studies both Cell sorting and Flow cytometry.
Sorting is often connected to Programming language in his work.
Programming language and Sorting are frequently intertwined in his study.
He merges many fields, such as Mutation and Frameshift mutation, in his writings.
His study in Phenotype extends to Frameshift mutation with its themes.
While working on this project, Winfried F. Pickl studies both Phenotype and Haploinsufficiency.
His most cited work include:
- Guidelines for the use of flow cytometry and cell sorting in immunological studies * (405 citations)
- NF-κB1 Haploinsufficiency Causing Immunodeficiency and EBV-Driven Lymphoproliferation (77 citations)
What are the main themes of his work throughout his whole career to date
His Immunology study frequently links to related topics such as Immunosuppression.
Immunosuppression is closely attributed to Immunology in his research.
He conducts interdisciplinary study in the fields of Pathology and Dermatology through his research.
His work often combines Dermatology and Pathology studies.
Winfried F. Pickl integrates Antibody with Lymphoproliferative disorders in his research.
Winfried F. Pickl connects Lymphoproliferative disorders with Antibody in his study.
Winfried F. Pickl integrates Antigen and Immunoglobulin E in his research.
He performs multidisciplinary studies into Immunoglobulin E and Allergy in his work.
He integrates several fields in his works, including Allergy and Cross-reactivity.
Winfried F. Pickl most often published in these fields:
- Immunology (90.00%)
- Pathology (40.00%)
- Antibody (40.00%)
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