机器学习在血液学诊断中的应用

Aditi Chandra, A. Chauhan, N. Bansal, A. Rajpoot
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引用次数: 0

摘要

立即和准确的临床结论是有效治疗疾病的基础。它利用人工智能计算,并依赖于研究中心血液测试的结果,我们构建了两个预测血液病的模型。一个有先见之明的模型使用所有可访问的血液测试边界,另一个只使用通常在理解确认时估计的缩小集。这两种方法都得到了积极的结果,从五种毫无疑问的感染中获得了0.88和0.86的明智数据,而在只考虑最可能的疾病时获得了0.59和0.57。模型并不是完全不寻常,表明边界的减少安排可以解决感染的相关“指纹”。这些数据提高了模型的利用率,使之为广泛的专家所使用,并表明血液检查的结果包含比专家通常所包含的更多的数据。临床初步表明,我们的理论模型的精度是可靠的血液治疗专家。我们的检查急于表明,学习模式是一种以血液为基础的明智的模式,仅使用测试就可以令人满意地预测血液病。这种影响同样可以为临床分析提供特殊的自由。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Machine Learning In Hematological Diagnosis
Immediate and precise clinical conclusion is fundamental for viable treatment of sicknesses. It utilizes AI calculations and dependent on the consequences of research centre blood tests, we have constructed two models anticipating hematologic sickness. One prescient model uses all accessible boundaries for blood tests and another utilized just a diminished set that is typically estimated in understanding confirmation. The two sorts yield positive results, securing 0.88 and 0.86 judicious data from an overview of five no doubt infections and 0.59 and 0.57 while pondering only the most likely disease. Models it was not altogether extraordinary, showing that the diminished arrangement of boundaries can address the relating “Fingerprints” of the infection. This data upgrades the utilization of the model to be used by broad experts and it shows that the consequences of a blood test contain more data than specialists normally do. A clinical preliminary has shown, the precision of our theoretical models was reliable with hematology treatment specialists. Our examination rushes to show that the learning model is a blood-based judicious model tests alone can be used satisfactorily to expect Hematological sicknesses. This impact can likewise be opened exceptional freedoms for clinical analysis.
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