Sakashita M, Sakashita S, Sakata A et al (2017) An autopsy case of non-traumatic fat embolism syndrome. Pathol Int 67(9):477–482
Castiglioni C, Carminati A, Fracasso T (2023) Fat embolism after intraosseous catheters in pediatric forensic autopsies. Int J Legal Med 137(3):787–791
Article CAS PubMed Google Scholar
Meng Y, Zhang M, Ling H et al (2020) Nontraumatic multiple-organ fat embolism: an autopsy case and review of literature. Am J Forensic Med Pathol 41(2):131–134
Bailey K, Wesley J, Adeyinka A et al (2019) Integrating fat embolism syndrome scoring indices in sickle cell disease: a practice management review. J Intensive Care Med 34(10):797–804
Celik SU, Kocaay AF, Sevim Y et al (2015) Renal angiomyolipoma with caval extension and pulmonary fat embolism: a case report. Medicine 94(31):e1078
Rosen JM, Braman SS, Hasan FM et al (1986) Nontraumatic fat embolization: a rare cause of new pulmonary infiltrates in an immunocompromised patient. Am Rev Respir Dis 134(4):805–808
Schulz F, Trübner K, Hilderbrand E (1996) Fatal fat embolism in acute hepatic necrosis with associated fatty liver. Am J Forensic Med Pathol 17(3):264–268
Article CAS PubMed Google Scholar
Neri M, Riezzo I, Dambrosio M et al (2010) CD61 and fibrinogen immunohistochemical study to improve the post-mortem diagnosis in a fat embolism syndrome clinically demonstrated by transesophageal echocardiography. Forensic Sci Int 202(1-3):e13–e17
Article CAS PubMed Google Scholar
Milroy CM, Parai JL (2019) Fat embolism, fat embolism syndrome and the autopsy. Acad Forensic Pathol 9(3-4):136–154
Falzi G, Henn R, Spann W (1964) Über pulmonale Fettembolien nach Traumen mit verschieden langer Überlebenszeit. Munch Med Wochenschr 106:978–981
Mason K (1962) Aviation accident pathology: a study of fatalities. Butterworth, p 358
Mudd KL, Hunt A, Matherly RC et al (2000) Analysis of pulmonary fat embolism in blunt force fatalities. J Trauma Acute Care Surg 48(4):711–715
Sevitt S (1977) The significance and pathology of fat embolism. Ann Clin Res 9:173–180
Turillazzi E, Riezzo I, Neri M et al (2008) The diagnosis of fatal pulmonary fat embolism using quantitative morphometry and confocal laser scanning microscopy. Pathol Res Pract 204(4):259–266
Arregui M, Fernández A, Paz-Sánchez Y et al (2020) Comparison of three histological techniques for fat emboli detection in lung cetacean’s tissue. Sci Rep 10(1):8251
Article CAS PubMed PubMed Central Google Scholar
Moore NP, Boogaard PJ, Bremer S et al (2013) Guidance on classification for reproductive toxicity under the globally harmonized system of classification and labelling of chemicals (GHS). Crit Rev Toxicol 43(10):850–891
Article CAS PubMed Google Scholar
Hosseini MS, Bejnordi BE, Trinh VQH et al (2023) Computational pathology: a survey review and the way forward. arXiv:2304.05482[eess.IV]
Cui M, Zhang DY (2021) Artificial intelligence and computational pathology. Lab Investig 101(4):412–422
Campanella G, Hanna MG, Geneslaw L et al (2019) Clinical-grade computational pathology using weakly supervised deep learning on whole slide images. Nat Med 25(8):1301–1309
Article CAS PubMed PubMed Central Google Scholar
Chen D, Fu M, Chi L et al (2022) Prognostic and predictive value of a pathomics signature in gastric cancer. Nat Commun 13(1):6903
Article CAS PubMed PubMed Central Google Scholar
Kather JN, Pearson AT, Halama N et al (2019) Deep learning can predict microsatellite instability directly from histology in gastrointestinal cancer. Nat Med 25(7):1054–1056
Article CAS PubMed PubMed Central Google Scholar
Cao R, Yang F, Ma SC et al (2020) Development and interpretation of a pathomics-based model for the prediction of microsatellite instability in colorectal cancer. Theranostics 10(24):11080
Article CAS PubMed PubMed Central Google Scholar
Chen S, Jiang L, Zheng X et al (2021) Clinical use of machine learning-based pathomics signature for diagnosis and survival prediction of bladder cancer. Cancer Sci 112(7):2905–2914
Article CAS PubMed PubMed Central Google Scholar
Jarkman S, Karlberg M, Pocevičiūtė M et al (2022) Generalization of deep learning in digital pathology: experience in breast cancer metastasis detection. Cancers 14(21):5424
Article PubMed PubMed Central Google Scholar
Wang X, Chen H, Gan C et al (2019) Weakly supervised deep learning for whole slide lung cancer image analysis. IEEE Trans Cybern 50(9):3950–3962
Choi HR, Siadari TS, Kim JE et al (2022) Automatic detection of teeth and dental treatment patterns on dental panoramic radiographs using deep neural networks. Forensic Sci Res 7(3):456–466
Article PubMed PubMed Central Google Scholar
Cao Y, Ma Y, Yang X et al (2022) Use of deep learning in forensic sex estimation of virtual pelvic models from the Han population. Forensic Sci Res 7(3):540–549
Article PubMed PubMed Central Google Scholar
Li Y, Huang Z, Dong X et al (2019) Forensic age estimation for pelvic X-ray images using deep learning. Eur Radiol 29:2322–2329
Peng LQ, Guo Y, Wan L et al (2022) Forensic bone age estimation of adolescent pelvis X-rays based on two-stage convolutional neural network. Int J Legal Med 136(3):797–810
Bewes J, Low A, Morphett A et al (2019) Artificial intelligence for sex determination of skeletal remains: application of a deep learning artificial neural network to human skulls. J Forensic Legal Med 62:40–43
Zhang J, Zhou Y, Vieira DN et al (2021) An efficient method for building a database of diatom populations for drowning site inference using a deep learning algorithm. Int J Legal Med 135:817–827
Zhou Y, Zhang J, Huang J et al (2019) Digital whole-slide image analysis for automated diatom test in forensic cases of drowning using a convolutional neural network algorithm. Forensic Sci Int 302:109922
Zhang J, Vieira DN, Cheng Q et al (2023) DiatomNet v1. 0: A novel approach for automatic diatom testing for drowning diagnosis in forensically biomedical application. Comput Methods Prog Biomed 232:107434
Brinkmann B, Borgner M, von Bülow M (1976) Fat embolism of the lungs as the cause of death. Etiology, pathogenesis and reasoning. Z Rechtsmed 78:255–272
Article CAS PubMed Google Scholar
Bunai Y, Yoshimi N, Komoriya H et al (1988) An application of a quantitative analytical system for the grading of pulmonary fat embolisms. Forensic Sci Int 39(3):263–269
Article CAS PubMed Google Scholar
Busuttil A, Hanley JJ (1994) A semi-automated micro-method for the histological assessment of fat embolism. Int J Legal Med 107:90–95
Article CAS PubMed Google Scholar
Chatzaraki V, Heimer J, Thali MJ et al (2019) Approaching pulmonary fat embolism on postmortem computed tomography. Int J Legal Med 133:1879–1887
Makino Y, Kojima M, Yoshida M et al (2020) Postmortem CT and MRI findings of massive fat embolism. Int J Legal Med 134:669–678
Cheng Q, Zhu Y, Deng K et al (2022) Label-free diagnosis of pulmonary fat embolism using fourier transform infrared (FT-IR) spectroscopic imaging. Appl Spectrosc 76(3):352–360
Article CAS PubMed Google Scholar
Voisard MX, Schweitzer W, Jackowski C (2013) Pulmonary fat embolism—a prospective study within the forensic autopsy collective of the Republic of Iceland. J Forensic Sci 58:S105–S111
Janssen W (1984) Forensic histopathology. Springer-Verlag, Berlin, p 402
Comments (0)