Saxena Shilpi, Sanyal Parikshit, Bajpai Mukul, Prakash Rajat, Kumar Shiv
Classified Specialist (Pathology) & Trained in Hematopathology, Command Hospital (Western Command), Chandimandir, India.
Classified Specialist (Pathology) & Trained in Transplant Immunology, Command Hospital (Western Command), Chandimandir, India.
Med J Armed Forces India. 2025 May-Jun;81(3):291-300. doi: 10.1016/j.mjafi.2023.10.007. Epub 2023 Dec 26.
Detection of malaria parasite from blood smears remains the gold standard for confirmation of diagnosis. Screening blood smears for malaria parasite has a sensitivity of 75 %, and requires intensive training of the laboratory technician. In the present study, we have attempted to develop an artificial intelligence to automate the process of malaria parasite detection.
We acquired 352 images of Leishman-Giemsa-stained peripheral blood smears, containing either normal red blood cells (RBCs) or parasitised RBCs. With a trial and error approach, we developed five deep learning models: (A) Naive deep convolutional neural network (DCNN) for trophozoites, (B) Modified Inception V3 pretrained neural network (C) Combination of model A and B, (D) Segmentation of cells from the images through Watershed Transform and naive tri-class DCNN (normal RBCs, parasitised RBCs, WBC/platelets), and (E) A naive DCNN model to detect ring forms. The images were randomly split into training and test sets and training was imparted on all the models. After completion of training, performance of each model was assessed on the test set.
Overall, the best combination of sensitivity and specificity was seen in model D (85 % and 94 %, respectively) in detecting parasites; in addition to trophozoites, model D could also detect ring forms. The performance of model A, B & C suffered from lack of either sensitivity or specificity.
The present study represents the first step towards development of a complete module for screening malaria parasites from automated microphotography/whole slide images.
通过血涂片检测疟原虫仍然是确诊疟疾的金标准。筛查疟原虫血涂片的灵敏度为75%,且需要对实验室技术人员进行强化培训。在本研究中,我们试图开发一种人工智能技术来实现疟原虫检测过程的自动化。
我们获取了352张经利什曼-吉姆萨染色的外周血涂片图像,其中包含正常红细胞(RBC)或被寄生的红细胞。通过反复试验的方法,我们开发了五个深度学习模型:(A)用于滋养体的朴素深度卷积神经网络(DCNN),(B)改进的预训练Inception V3神经网络,(C)模型A和B的组合,(D)通过分水岭变换从图像中分割细胞以及朴素的三分类DCNN(正常红细胞、被寄生的红细胞、白细胞/血小板),(E)用于检测环状体的朴素DCNN模型。这些图像被随机分为训练集和测试集,并对所有模型进行训练。训练完成后,在测试集上评估每个模型的性能。
总体而言,在检测寄生虫方面,模型D的灵敏度和特异性组合最佳(分别为85%和94%);除了滋养体,模型D还能检测环状体。模型A、B和C的性能存在灵敏度或特异性不足的问题。
本研究代表了朝着开发一个完整模块迈出的第一步,该模块用于从自动显微摄影/全玻片图像中筛查疟原虫。