为医疗保健专业人员提供无代码人工智能平台,用于模型开发,病理学的实际演示。

Discoveries (Craiova, Romania) Pub Date : 2024-03-30 eCollection Date: 2024-01-01 DOI:10.15190/d.2024.1
Sayed Shahabuddin Hoseini, Rajan Dewar
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引用次数: 0

摘要

人工智能(AI)和基于机器学习的应用程序被认为通过改变诊断性患者管理方法来影响医疗保健实践。然而,领域知识、临床和编码专业知识可能是开发实用人工智能模型的最大挑战和实质性障碍。大多数信息学和人工智能专家都不熟悉医学中的细微差别,大多数医生也不是高效的程序员。为了解决这一障碍,一些“无代码”人工智能平台正在出现。它们使医疗专业人员无需编码技能即可创建人工智能模型。本研究检验了teatable Machine™,一个无代码人工智能平台,将白细胞分为五种常见的白细胞类型。使用来自公开可用数据集的训练数据,并通过微调超参数提高模型精度。灵敏度、精度和F1评分计算评估模型性能,并采用独立数据集进行测试。对影响模型性能的几个因素进行了测试。该模型对白细胞的分类准确率达到97%,具有较高的灵敏度和精度。独立验证支持其进一步开发的潜力。这是第一个使用真实数据集进行训练的研究,证明了在血液病理学中使用基于免费无代码算法的AI平台的价值。它为医疗保健专业人员提供了一个机会,让他们获得人工智能的实践经验,并在没有编码专业知识的情况下创建实用的人工智能模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empowering healthcare professionals with no-code artificial intelligence platforms for model development, a practical demonstration for pathology.

Artificial intelligence (AI) and machine learning based applications are thought to impact the practice of healthcare by transforming diagnostic patient management approaches. However, domain knowledge, clinical and coding expertise are likely the biggest challenge and a substantial barrier in developing practical AI models. Most informatics and AI experts are not familiar with the nuances in medicine, and most doctors are not efficient coders. To address this barrier, a few "no-code" AI platforms are emerging. They enable medical professionals to create AI models without coding skills. This study examines Teachable Machine™, a no-code AI platform, to classify white blood cells into the five common WBC types. Training data from publicly available datasets were used, and model accuracy was improved by fine-tuning hyperparameters. Sensitivity, precision, and F1 score calculations evaluated model performance, and independent datasets were employed for testing. Several factors that influence the performance of the model were tested. The model achieved 97% accuracy in classifying white blood cells, with high sensitivity and precision. Independent validation supported its potential for further development. This is the first study that demonstrates the value of a free no-code algorithm based AI platforms use in hematopathology using authentic datasets for training. It opens an opportunity for the healthcare professionals to get hands-on experience with AI and to create practical AI models without coding expertise.

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