9 results match your criteria: "University of Haifa Campus[Affiliation]"

Theoretical guarantees for causal inference using propensity scores are partially based on the scores behaving like conditional probabilities. However, prediction scores between zero and one do not necessarily behave like probabilities, especially when output by flexible statistical estimators. We perform a simulation study to assess the error in estimating the average treatment effect before and after applying a simple and well-established postprocessing method to calibrate the propensity scores.

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The Israeli Society for HealthTech aims at advancing the integration of innovation and healthcare entrepreneurship into medical practice and across traditional health professions, to benefit patients and improve quality of care. In 2021, the Society launched the first fellowship for board certified physicians in HealthTech. This backstory discusses the motivation of launching the program and reviews the design of the fellowship, including curriculum, the expertise of the lecturers, and initial tangible results of the program.

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A historical perspective of biomedical explainable AI research.

Patterns (N Y)

September 2023

AI for Accelerated Healthcare & Life Sciences Discovery, IBM R&D Laboratories, University of Haifa Campus, Mount Carmel, Haifa 3498825, Israel.

The black-box nature of most artificial intelligence (AI) models encourages the development of explainability methods to engender trust into the AI decision-making process. Such methods can be broadly categorized into two main types: post hoc explanations and inherently interpretable algorithms. We aimed at analyzing the possible associations between COVID-19 and the push of explainable AI (XAI) to the forefront of biomedical research.

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Background And Objectives: Investigations of the prognosis are vital for better patient management and decision-making in patients with advanced metastatic renal cell carcinoma (mRCC). The purpose of this study is to evaluate the capacity of emerging Artificial Intelligence (AI) technologies to predict three- and five-year overall survival (OS) for mRCC patients starting their first-line of systemic treatment.

Patients And Methods: The retrospective study included 322 Italian patients with mRCC who underwent systemic treatment between 2004 and 2019.

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Virtual Biopsy by Using Artificial Intelligence-based Multimodal Modeling of Binational Mammography Data.

Radiology

March 2023

From the AI for Accelerated Healthcare & Life Sciences Discovery, IBM R&D Laboratories, University of Haifa Campus, Mount Carmel, Haifa 3498825, Israel (V.B., T.T., E.B., E.H., M.R.Z.); The Hebrew University of Jerusalem, Ein Kerem Campus, Jerusalem, Israel (V.B., M.R.Z.); IBM Watson Health, Cambridge, Mass (D.G.); RadPartners, Jefferson Radiology, East Hartford, Conn (D.G.); Department of Imaging, Assuta Medical Center, Tel Aviv, Israel (M.G.); and Ben-Gurion University Medical School, Be'er Sheva, Israel (M.G.).

Background Computational models based on artificial intelligence (AI) are increasingly used to diagnose malignant breast lesions. However, assessment from radiologic images of the specific pathologic lesion subtypes, as detailed in the results of biopsy procedures, remains a challenge. Purpose To develop an AI-based model to identify breast lesion subtypes with mammograms and linked electronic health records labeled with histopathologic information.

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Artificial Intelligence for Reducing Workload in Breast Cancer Screening with Digital Breast Tomosynthesis.

Radiology

April 2022

From the Department of Healthcare Informatics, IBM Research, IBM R&D Laboratories, University of Haifa Campus, Mount Carmel, Haifa 3498825, Israel (Y.S., R.B., F.G.S., V.R., E.B., M.O.F., M.A., D.K., M.R.Z.); and The Russell H. Morgan Department of Radiology and Radiological Science, Breast Imaging Division, Johns Hopkins Medicine, Baltimore, Md (E.B.A., E.T.O., B.P., P.A.D., L.A.M.).

Background Digital breast tomosynthesis (DBT) has higher diagnostic accuracy than digital mammography, but interpretation time is substantially longer. Artificial intelligence (AI) could improve reading efficiency. Purpose To evaluate the use of AI to reduce workload by filtering out normal DBT screens.

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Quantification of tumor heterogeneity: from data acquisition to metric generation.

Trends Biotechnol

June 2022

IBM Research Europe -Säumerstrasse 4, Rüschlikon CH-8803, Zurich, Switzerland. Electronic address:

Tumors are unique and complex ecosystems, in which heterogeneous cell subpopulations with variable molecular profiles, aggressiveness, and proliferation potential coexist and interact. Understanding how heterogeneity influences tumor progression has important clinical implications for improving diagnosis, prognosis, and treatment response prediction. Several recent innovations in data acquisition methods and computational metrics have enabled the quantification of spatiotemporal heterogeneity across different scales of tumor organization.

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Predicting Breast Cancer by Applying Deep Learning to Linked Health Records and Mammograms.

Radiology

August 2019

From the Department of Healthcare Informatics, IBM Research, IBM R&D Labs, University of Haifa Campus, Mount Carmel, Haifa 3498825, Israel (A.A.B., M.C., Y.S., A.S., A.H., R.M., E.B., S.N., E.K., Y.G., M.R.Z.); MaccabiTech, MKM, Maccabi Healthcare Services, Tel Aviv, Israel (E.H., G.K., V.S.); and Department of Imaging, Assuta Medical Centers, Tel Aviv, Israel (M.G.).

Background Computational models on the basis of deep neural networks are increasingly used to analyze health care data. However, the efficacy of traditional computational models in radiology is a matter of debate. Purpose To evaluate the accuracy and efficiency of a combined machine and deep learning approach for early breast cancer detection applied to a linked set of digital mammography images and electronic health records.

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Changing the approach to treatment choice in epilepsy using big data.

Epilepsy Behav

March 2016

UCB Pharma, 1950 Lake Park Dr., Smyrna, GA 30080, USA. Electronic address:

Purpose: A UCB-IBM collaboration explored the application of machine learning to large claims databases to construct an algorithm for antiepileptic drug (AED) choice for individual patients.

Methods: Claims data were collected between January 2006 and September 2011 for patients with epilepsy > 16 years of age. A subset of patient claims with a valid index date of AED treatment change (new, add, or switch) were used to train the AED prediction model by retrospectively evaluating an index date treatment for subsequent treatment change.

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