Research and Scientific Partnerships

As a research-based startup, we have established numerous collaborations with academic institutions, diagnostic laboratories and research organizations, both in Brazil and internationally.

Academic and Research Partnerships

PickCells maintains strategic partnerships with educational and research institutions, strengthening our scientific foundation and expanding our capacity for innovation in AI applied to healthcare.

National Universities

University of Pernambuco (UPE) / CESAR School: PickCells maintains a strategic partnership with UPE and CESAR School for the development of research in Generative AI. UPE is one of the ICTs providing services in the FINEP digital pathology project developed by PickCells.

Federal University of Pernambuco (UFPE): The Computer Science Center (CIN-UFPE) is listed as one of the ICTs providing services in the FINEP early cancer detection project.

Catholic University of Pernambuco (UNICAP): Partner in the early cancer detection system project using artificial intelligence applied to digital pathology.

UPE CESAR School UFPE UNICAP

International Collaborations

University of Arizona (UA): PickCells participates in the "Multi-modal Approach for Predicting Infection Routes in Nursing Homes" project in partnership with College of Public Health/UA and College of Engineering/UA, contributing with expertise in AI applied to healthcare.

UC Davis: Monitoring and tracking viral spread (COVID-19) in nursing homes using machine learning.

ETH Zurich: High-level international research collaborations in AI applied to healthcare.

University of Arizona UC Davis ETH Zurich ISI Foundation

Large Scale Projects and Funding

FINEP Project

FINEP (Federal public company that promotes science, technology and innovation) in partnership with ICTs (UFPE and UPE).

PickCells project focused on building an early cancer detection system using AI applied to digital pathology (cervical and stomach cancer).

FINEP UFPE UPE

Sabin Investment

Sabin Medicina Diagnóstica was one of PickCells' angel investors in 2020.

Sabin laboratory expressed interest in participating in the multicenter validation phase of the digital pathology system developed in the FINEP project.

Sabin Angel Investment

Entomology Project

Emprel (Recife City Hall): Contract for MAIA-E (Entomology) solution in counting Aedes Aegypti eggs collected in Ovitrap traps.

Optimization of technicians' time through AI.

Emprel Recife City Hall

Sector Collaborations and R&D-Focused Clients

Entities that are clients or partners in specific cases of AI-based product development.

Nestlé Nutrition

Partnership in developing the Descomplicô Baby platform, which performs multimodal baby health screening through stool analysis.

Prospecting for a new project for personalized nutrition product recommendations, using AI for gynecological patient representatives.

Nestlé Descomplicô Baby

Hospitals and Laboratories

DB Diagnósticos: Collaboration in cervical cancer detection in cytological images using multi-model approach.

HC-FMUSP: Long Covid Analysis and Screening case, focusing on generating scientific correlation through analytics platform.

HCP: Hospital de Câncer de Pernambuco as listed client.

DB Diagnósticos HC-FMUSP HCP

HC-PE / Hospital das Clínicas de Pernambuco

Project focused on operational optimization and high-risk patient triage. Development of Risk Score and Oncological Triage with 95% accuracy in predicting death and cancer risk, plus intelligent queue and bed management.

HC-PE Oncology Risk Score

Vitally Health

Development of solution to support doctors in implementing clinical titration of patients with heart failure, suggesting medication changes and dosages based on wearable data.

TI Saúde

Construction of Datalake related to medical records for centralization and intelligent analysis of medical data, optimizing hospital and laboratory processes.

Scientific Publications

Our research has resulted in publications in scientific journals and prestigious conferences.

Machine Learning Applications in Digital Pathology

2023 | Rodrigo Paiva et al.

Research on machine learning applications in digital pathology, focusing on early cancer detection.

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A Solution for Counting Aedes aegypti and Aedes albopictus Eggs in Paddles from Ovitraps Using Deep Learning

2019 | Clodomir Joaquim de Santana Junior et al.

Solution for automated counting of Aedes aegypti and Aedes albopictus eggs in ovitrap paddles using deep learning, contributing to epidemiological monitoring of arboviruses.

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Automated Detection of Patients with ALL: A Literature Review

2023 | DE Carvalho et al.

Literature review on automated detection of Acute Lymphoblastic Leukemia (ALL), identifying important cytomorphological characteristics for automated analysis and comparing specificities of image databases and algorithms.

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Avaliando Técnicas de Aprendizado Profundo para Detecção de Esquistossomose Mansoni em Imagens de Exames Parasitológicos

2023 | Rodrigo F. A. P. de Oliveira et al.

Application of deep learning methods (CNN and SPNN) for automated detection of Schistosomiasis Mansoni eggs in parasitological examinations, with AUC above 0.90.

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Interested in Collaborating with Us?

We are always open to new scientific partnerships and research collaborations. Contact us to discuss possible projects.

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