Development of criteria to optimize manual smear review of automated complete blood counts using a machine learning model

被引:0
|
作者
Hayes, Jennifer M. [1 ]
Hayes, Mitchell R. [2 ]
Friedrichs, Kristen R. [3 ]
Simmons, Heather A. [1 ]
机构
[1] Univ Wisconsin Madison, Wisconsin Natl Primate Res Ctr, 1220 Capitol Court, Madison, WI 53715 USA
[2] Univ Wisconsin Madison, McArdle Lab Canc Res, Madison, WI USA
[3] Univ Wisconsin Madison, Sch Vet Med, Madison, WI USA
关键词
flag; hematology; nonhuman primate; slide; HEMATOLOGY;
D O I
10.1111/vcp.13400
中图分类号
S85 [动物医学(兽医学)];
学科分类号
0906 ;
摘要
ObjectiveIn this study, we aim to determine if machine learning can reduce manual smear review (MSR) rates while meeting or exceeding the performance of traditional MSR criteria.Method9938 automated CBCs with paired MSRs were performed on samples from rhesus and cynomolgus macaques. The definition of a positive (abnormal) smear was determined. Two expert-derived MSR criteria were created: criteria adapted from published, standardized human laboratory criteria (Adapted International Consensus Guidelines[aICG]) and internally generated criteria (Center Consensus Guidelines [CCG]). An ensemble machine learning model was trained on an independent subset of the data to optimize the balanced accuracy of classification, a combined measure of sensitivity and specificity. The resulting machine learning model and the two expert-derived MSR criteria were applied to a test dataset, and their performance compared.ResultsaICG criteria demonstrated high sensitivity (80.8%) and MSR rate (74.2%) while CCG criteria demonstrated lower sensitivity (57.1%) and MSR rate (36.1%). The machine learning model integrated with CCG criteria had a superior combination of both sensitivity (76.8%) and MSR rate (45.1%) achieving a false negative rate of 1.6%.ConclusionMachine learning in combination with expert-derived criteria can optimize the selection of samples for MSR thus decreasing MSR rates and labor efforts required for CBC performance.
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页数:10
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