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Table 4 BN model related application examples

From: Risk factors and prediction model for acute ischemic stroke after off-pump coronary artery bypass grafting based on Bayesian network

Case

Sex/Age

Risk factor

Output probability

intervention

AIS Occurred

1

M/67

IS history, severe carotid stenosis

0.11

Monitor blood pressure, ensure adequate blood volume, etc.

No

2

F/62

Female, high D-dimer level

0.01

Screen for embolus sources, shorten antithrombotic discontinuation, etc.

No

3

F/70

Female, IS history, severe carotid stenosis

0.15

Monitor blood pressure, ensure adequate blood volume, intensive postoperative monitoring, etc.

Yes

  1. BN, Bayesian network; AIS, acute ischemic stroke