학술논문
Machine learning can identify newly diagnosed patients with CLL at high risk of infection
Document Type
article
Author
Rudi Agius; Christian Brieghel; Michael A. Andersen; Alexander T. Pearson; Bruno Ledergerber; Alessandro Cozzi-Lepri; Yoram Louzoun; Christen L. Andersen; Jacob Bergstedt; Jakob H. von Stemann; Mette Jørgensen; Man-Hung Eric Tang; Magnus Fontes; Jasmin Bahlo; Carmen D. Herling; Michael Hallek; Jens Lundgren; Cameron Ross MacPherson; Jan Larsen; Carsten U. Niemann
Source
Nature Communications, Vol 11, Iss 1, Pp 1-17 (2020)
Subject
Language
English
ISSN
2041-1723
Abstract
Chronic lymphocytic leukemia is an indolent disease, and many patients succumb to infection rather than the direct effects of the disease. Here, the authors use medical records and machine learning to predict the patients that may be at risk of infection, which may enable a change in the course of their treatment.