| Literature DB >> 31601245 |
Yuanyuan Yao1, Jenny Cifuentes2, Bin Zheng3, Min Yan4.
Abstract
BACKGROUND: Checking appropriateness of blood transfusion for quality assurance required enormous usage of time and human resources from the healthcare system. We report here a new machine learning algorithm for checking blood transfusion quality.Entities:
Keywords: Artificial intelligence; Blood transfusion; Computer algorithm; Neural networks (computer); Patient safety; Surgery
Mesh:
Year: 2019 PMID: 31601245 PMCID: PMC6785926 DOI: 10.1186/s12967-019-2085-y
Source DB: PubMed Journal: J Transl Med ISSN: 1479-5876 Impact factor: 5.531
The information of collected variables
| Demographic information |
| Hospital |
| Preoperative anemia |
| Age |
| Weight |
| ASA grade (I–V) |
| Type of admission |
| Comorbidities |
| Hypertension |
| Cardiaovascular problems |
| Chronic obstractive pulmonary disease |
| Diabetes |
| Operation information |
| Type of surgical procedure |
| Duration of surgery |
| Volume of blood lost in surgery |
| Hemogrobin (Hb) level before transfusion |
Fig. 1Multilayer perceptron neural network structure
Classification results
| Physician judgement | General classification | ||
|---|---|---|---|
| Need transfusion | No need transfusion | ||
| Computer report | |||
| Yes | True positive 3569/3604 (99.0%) | False negative 122/1342 (9.1%) | |
| No | False positive 35/3604 (1.0%) | True negative 1220/1342 (90.9%) | |
96.8% (3569 + 1220)/4946 × 100% | |||
A total of 4946 entries, with 3604 about “need”, and 1342 for “no need”