Harnessing Machine Learning for Agnostic Biodetection.

IF 1.6 4区 医学 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Health Security Pub Date : 2025-05-01 Epub Date: 2025-05-30 DOI:10.1089/hs.2024.0075
Sarah H Sandholtz, Camilo Valdes, Nisha Mulakken, Marisa W Torres, Aram Avila-Herrera, Jeffrey A Drocco, Jose Manuel Martí, Jonathan E Allen, Uttara Tipnis, Crystal J Jaing, Nicholas A Be
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引用次数: 0

Abstract

The United States' current list-based approach to biodefense is limited because it considers only known biological agents. Alternatively, developing and adopting a system based on agent-agnostic signatures would enable detection and characterization of both known and novel agents, thereby engendering greater adaptability in the face of an evolving threat landscape. Machine learning (ML) could aid in such a transition, as it can recognize and encode highly complex patterns from multiple input data modalities and has already demonstrated success in many healthcare and defense applications. Functionalizing ML for environmental biodetection requires understanding current technical capabilities. In this article, we provide a systematic review of existing ML platforms and discuss anticipated development efforts needed to achieve effective ML-enabled, agnostic biodetection.

利用机器学习进行不可知论生物检测。
美国目前基于清单的生物防御方法是有限的,因为它只考虑已知的生物制剂。或者,开发和采用一个基于代理不可知签名的系统将能够检测和表征已知和新的代理,从而在面对不断变化的威胁环境时产生更大的适应性。机器学习(ML)可以帮助实现这种转变,因为它可以从多种输入数据模式中识别和编码高度复杂的模式,并且已经在许多医疗保健和国防应用中取得了成功。将机器学习功能化用于环境生物检测需要了解当前的技术能力。在本文中,我们对现有的机器学习平台进行了系统的回顾,并讨论了实现有效的机器学习支持的未知生物检测所需的预期开发工作。
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来源期刊
Health Security
Health Security PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
4.80
自引率
6.10%
发文量
70
期刊介绍: Health Security is a peer-reviewed journal providing research and essential guidance for the protection of people’s health before and after epidemics or disasters and for ensuring that communities are resilient to major challenges. The Journal explores the issues posed by disease outbreaks and epidemics; natural disasters; biological, chemical, and nuclear accidents or deliberate threats; foodborne outbreaks; and other health emergencies. It offers important insight into how to develop the systems needed to meet these challenges. Taking an interdisciplinary approach, Health Security covers research, innovations, methods, challenges, and ethical and legal dilemmas facing scientific, military, and health organizations. The Journal is a key resource for practitioners in these fields, policymakers, scientific experts, and government officials.
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