Diagnostic test accuracy of machine learning algorithms for the detection intracranial hemorrhage: a systematic review and meta-analysis study

被引:3
作者
Maghami, Masoud [1 ]
Sattari, Shahab Aldin [2 ]
Tahmasbi, Marziyeh [3 ]
Panahi, Pegah [1 ]
Mozafari, Javad [4 ,5 ]
Shirbandi, Kiarash
机构
[1] Ahvaz Jundishapur Univ Med Sci, Sch Med, Ahvaz, Iran
[2] Johns Hopkins Univ, Sch Med, Dept Neurosurg, Baltimore, MD 21205 USA
[3] Ahvaz Jundishapur Univ Med Sci, Sch Allied Med Sci, Dept Med Imaging & Radiat Sci, Ahvaz, Iran
[4] Ahvaz Jundishapur Univ Med Sci, Sch Med, Dept Emergency Med, Ahvaz, Iran
[5] EUREGIO Klin Albert Schweitzer Str GmbH, Dept Radiol, Nordhorn, Germany
关键词
Brain diseases; Cerebrovascular disorders; Intracranial hemorrhages; Artificial intelligence; Machine learning; Deep learning; Meta-analysis; DEEP NEURAL-NETWORK; ARTIFICIAL-INTELLIGENCE; ISCHEMIC-STROKE; CT;
D O I
10.1186/s12938-023-01172-1
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
BackgroundThis systematic review and meta-analysis were conducted to objectively evaluate the evidence of machine learning (ML) in the patient diagnosis of Intracranial Hemorrhage (ICH) on computed tomography (CT) scans.MethodsUntil May 2023, systematic searches were conducted in ISI Web of Science, PubMed, Scopus, Cochrane Library, IEEE Xplore Digital Library, CINAHL, Science Direct, PROSPERO, and EMBASE for studies that evaluated the diagnostic precision of ML model-assisted ICH detection. Patients with and without ICH as the target condition who were receiving CT-Scan were eligible for the research, which used ML algorithms based on radiologists' reports as the gold reference standard. For meta-analysis, pooled sensitivities, specificities, and a summary receiver operating characteristics curve (SROC) were used.ResultsAt last, after screening the title, abstract, and full paper, twenty-six retrospective and three prospective, and two retrospective/prospective studies were included. The overall (Diagnostic Test Accuracy) DTA of retrospective studies with a pooled sensitivity was 0.917 (95% CI 0.88-0.943, I2 = 99%). The pooled specificity was 0.945 (95% CI 0.918-0.964, I2 = 100%). The pooled diagnostic odds ratio (DOR) was 219.47 (95% CI 104.78-459.66, I2 = 100%). These results were significant for the specificity of the different network architecture models (p-value = 0.0289). However, the results for sensitivity (p-value = 0.6417) and DOR (p-value = 0.2187) were not significant. The ResNet algorithm has higher pooled specificity than other algorithms with 0.935 (95% CI 0.854-0.973, I2 = 93%).ConclusionThis meta-analysis on DTA of ML algorithms for detecting ICH by assessing non-contrast CT-Scans shows the ML has an acceptable performance in diagnosing ICH. Using ResNet in ICH detection remains promising prediction was improved via training in an Architecture Learning Network (ALN).
引用
收藏
页数:23
相关论文
共 69 条
  • [1] A Prehospital Triage System to Detect Traumatic Intracranial Hemorrhage Using Machine Learning Algorithms
    Abe, Daisu
    Inaji, Motoki
    Hase, Takeshi
    Takahashi, Shota
    Sakai, Ryosuke
    Ayabe, Fuga
    Tanaka, Yoji
    Otomo, Yasuhiro
    Maehara, Taketoshi
    [J]. JAMA NETWORK OPEN, 2022, 5 (06) : E2216393
  • [2] Artificial intelligence for detection of intracranial haemorrhage on head computed tomography scans: diagnostic accuracy in Hong Kong
    Abrigo, Jill M.
    Ko, Ka -long
    Chen, Qianyun
    Lai, Billy M. H.
    Cheung, Tom C. Y.
    Chu, Winnie C. W.
    Yu, Simon C. H.
    [J]. HONG KONG MEDICAL JOURNAL, 2023, 29 (02) : 112 - 120
  • [3] A joint convolutional-recurrent neural network with an attention mechanism for detecting intracranial hemorrhage on noncontrast head CT
    Alis, Deniz
    Alis, Ceren
    Yergin, Mert
    Topel, Cagdas
    Asmakutlu, Ozan
    Bagcilar, Omer
    Senli, Yeseren Deniz
    Ustundag, Ahmet
    Salt, Vefa
    Dogan, Sebahat Nacar
    Velioglu, Murat
    Selcuk, Hakan Hatem
    Kara, Batuhan
    Ozer, Caner
    Oksuz, Ilkay
    Kizilkilic, Osman
    Karaarslan, Ercan
    [J]. SCIENTIFIC REPORTS, 2022, 12 (01)
  • [4] Intracerebral hemorrhage detection on computed tomography images using a residual neural network
    Altuve, Miguel
    Perez, Ana
    [J]. PHYSICA MEDICA-EUROPEAN JOURNAL OF MEDICAL PHYSICS, 2022, 99 : 113 - 119
  • [5] Epidemiology, Risk Factors, and Clinical Features of Intracerebral Hemorrhage: An Update
    An, Sang Joon
    Kim, Tae Jung
    Yoon, Byung-Woo
    [J]. JOURNAL OF STROKE, 2017, 19 (01) : 3 - 10
  • [6] Advanced machine learning in action: identification of intracranial hemorrhage on computed tomography scans of the head with clinical workflow integration
    Arbabshirani, Mohammad R.
    Fornwalt, Brandon K.
    Mongelluzzo, Gino J.
    Suever, Jonathan D.
    Geise, Brandon D.
    Patel, Aalpen A.
    Moore, Gregory J.
    [J]. NPJ DIGITAL MEDICINE, 2018, 1
  • [7] Artifacts in CT: Recognition and avoidance
    Barrett, JF
    Keat, N
    [J]. RADIOGRAPHICS, 2004, 24 (06) : 1679 - 1691
  • [8] Hybrid 3D/2D Convolutional Neural Network for Hemorrhage Evaluation on Head CT
    Chang, P. D.
    Kuoy, E.
    Grinband, J.
    Weinberg, B. D.
    Thompson, M.
    Homo, R.
    Chen, J.
    Abcede, H.
    Shafie, M.
    Sugrue, L.
    Filippi, C. G.
    Su, M. -Y.
    Yu, W.
    Hess, C.
    Chow, D.
    [J]. AMERICAN JOURNAL OF NEURORADIOLOGY, 2018, 39 (09) : 1609 - 1616
  • [9] Deep learning algorithms for detection of critical findings in head CT scans: a retrospective study
    Chilamkurthy, Sasank
    Ghosh, Rohit
    Tanamala, Swetha
    Biviji, Mustafa
    Campeau, Norbert G.
    Venugopal, Vasantha Kumar
    Mahajan, Vidur
    Rao, Pooja
    Warier, Prashant
    [J]. LANCET, 2018, 392 (10162) : 2388 - 2396
  • [10] Deep Learning Applied to Intracranial Hemorrhage Detection
    Cortes-Ferre, Luis
    Gutierrez-Naranjo, Miguel Angel
    Egea-Guerrero, Juan Jose
    Perez-Sanchez, Soledad
    Balcerzyk, Marcin
    [J]. JOURNAL OF IMAGING, 2023, 9 (02)