首页|An online alpha-thalassemia carrier discrimination model based on random forest and red blood cell parameters for low HbA2 cases

An online alpha-thalassemia carrier discrimination model based on random forest and red blood cell parameters for low HbA2 cases

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? 2021 Elsevier B.V.Background: Since screening of α-thalassemia carriers by low HbA2 has a low positive predictive value (PPV), the PPV was as low as 40.97% in our laboratory, other more effective screening methods need to be devised. This study aimed at developing a machine learning model by using red blood cell parameters to identify α-thalassemia carriers from low HbA2 patients. Methods: Laboratory data of 1213 patients with low HbA2 used for modeling was randomly divided into the training set (849 of 1213, 70%) and the internal validation set (364 of 1213, 30%). In addition, an external data set (n = 399) was used for model validation. Fourteen machine learning methods were applied to construct a discriminant model. Performance was evaluated with accuracy, sensitivity, specificity, etc. and compared with 7 previously published discriminant function formulae. Results: The optimal model was based on random forest with 5 clinical features. The PPV of the model was more than twice the PPV of HbA2, and the model had a high negative predictive value (NPV) at the same time. Compared with seven formulae in screening of α-thalassemia carriers, the model had a better accuracy (0.915), specificity (0.967), NPV (0.901), PPV (0.942) and area under the receiver operating characteristic curve (AUC, 0.948) in the independent test set. Conclusion: Use of a random forest-based model enables rapid discrimination of α-thalassemia carriers from low HbA2 cases.

Discriminant modelLow HbA2 casesMachine learningRed blood cell parametersα-thalassemia carrier

Feng P.、Li Y.、Liao Z.、Yao Z.、Xie S.、Hu B.、Huang C.、Liu W.、Xu H.、Liu M.、Gan W.、Lin W.

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Department of Clinical Laboratory The First Affiliated Hospital of Sun Yat-sen University

Department of Clinical Laboratory The Third Affiliated Hospital of Sun Yat-sen University

R&D Center Beijing Deepwise & League of PHD Technology Co. Ltd

2022

Clinica chimica acta

Clinica chimica acta

ISTP
ISSN:0009-8981
年,卷(期):2022.525
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