Hybrid Quantum Image Classification and Federated Learning for Hepatic Steatosis Diagnosis.

computer-aided diagnosis federated learning histology hybrid quantum ResNet hybrid quantum neural network medical image classification quantum machine learning

Journal

Diagnostics (Basel, Switzerland)
ISSN: 2075-4418
Titre abrégé: Diagnostics (Basel)
Pays: Switzerland
ID NLM: 101658402

Informations de publication

Date de publication:
06 Mar 2024
Historique:
received: 10 01 2024
revised: 17 02 2024
accepted: 26 02 2024
medline: 13 3 2024
pubmed: 13 3 2024
entrez: 13 3 2024
Statut: epublish

Résumé

In the realm of liver transplantation, accurately determining hepatic steatosis levels is crucial. Recognizing the essential need for improved diagnostic precision, particularly for optimizing diagnosis time by swiftly handling easy-to-solve cases and allowing the expert time to focus on more complex cases, this study aims to develop cutting-edge algorithms that enhance the classification of liver biopsy images. Additionally, the challenge of maintaining data privacy arises when creating automated algorithmic solutions, as sharing patient data between hospitals is restricted, further complicating the development and validation process. This research tackles diagnostic accuracy by leveraging novel techniques from the rapidly evolving field of quantum machine learning, known for their superior generalization abilities. Concurrently, it addresses privacy concerns through the implementation of privacy-conscious collaborative machine learning with federated learning. We introduce a hybrid quantum neural network model that leverages real-world clinical data to assess non-alcoholic liver steatosis accurately. This model achieves an image classification accuracy of 97%, surpassing traditional methods by 1.8%. Moreover, by employing a federated learning approach that allows data from different clients to be shared while ensuring privacy, we maintain an accuracy rate exceeding 90%. This initiative marks a significant step towards a scalable, collaborative, efficient, and dependable computational framework that aids clinical pathologists in their daily diagnostic tasks.

Identifiants

pubmed: 38473030
pii: diagnostics14050558
doi: 10.3390/diagnostics14050558
pii:
doi:

Types de publication

Journal Article

Langues

eng

Auteurs

Luca Lusnig (L)

Terra Quantum AG, 9000 St. Gallen, Switzerland.
Research Unit of Paleoradiology and Allied Sciences, Laboratorio di Telematica Sanitaria-Struttura Complessa Informatica e Telecomunicazioni, Azienda Sanitaria Universitaria Giuliana Isontina, 34149 Trieste, Italy.

Asel Sagingalieva (A)

Terra Quantum AG, 9000 St. Gallen, Switzerland.

Mikhail Surmach (M)

Terra Quantum AG, 9000 St. Gallen, Switzerland.

Tatjana Protasevich (T)

Terra Quantum AG, 9000 St. Gallen, Switzerland.

Ovidiu Michiu (O)

Terra Quantum AG, 9000 St. Gallen, Switzerland.

Joseph McLoughlin (J)

Terra Quantum AG, 9000 St. Gallen, Switzerland.

Christopher Mansell (C)

Terra Quantum AG, 9000 St. Gallen, Switzerland.

Graziano De' Petris (G)

Laboratorio di Telematica Sanitaria-Struttura Complessa Informatica e Telecomunicazioni, Azienda Sanitaria Universitaria Giuliana Isontina, 34149 Trieste, Italy.

Deborah Bonazza (D)

Department of Medical, Surgical and Health Sciences, University of Trieste, Cattinara Academic Hospital, 34149 Trieste, Italy.

Fabrizio Zanconati (F)

Department of Medical, Surgical and Health Sciences, University of Trieste, Cattinara Academic Hospital, 34149 Trieste, Italy.

Alexey Melnikov (A)

Terra Quantum AG, 9000 St. Gallen, Switzerland.

Fabio Cavalli (F)

Research Unit of Paleoradiology and Allied Sciences, Laboratorio di Telematica Sanitaria-Struttura Complessa Informatica e Telecomunicazioni, Azienda Sanitaria Universitaria Giuliana Isontina, 34149 Trieste, Italy.

Classifications MeSH