References
- Bell WE: Clinical management of temporomandibular disorders. Year Book Medical Publishers, Inc. 1982:183–187.
- Brooks SL, Brand JW, Gibbs SJ, Hollender L, Lurie AG, Omnell K, Westesson P, White SC: Imaging of the temporomandibular joint. Oral Surg Oral Med Oral Path Oral Radiol Endod 1997; 83:609–618.
- Artvinli LB, Kartsu O: Trifid mandibular condyle: a case report. Oral Surg Oral Med Oral Path Oral Radiol Endod 2003; 95(2):251–254.
- Kersey ML, Nebbe B, Major PW: Temporomandibular joint morphology changes with mandibular advancement surgery and rigid internal fixation: a systematic literature review. Angle Orthodont 2003; 73(1):79–85.
- Thou D, Hu M, Liang D, Zhao G, Liu A: Relationship between fossa-condylar position, meniscus position, and morphologic change in patients with Class II and HI malocclusion. Chinese J Dent Res 1999; 2(1):45–49.
- Nilner M, Petersson A: Clinical and radiological findings related to treatment outcome in patients with temporomandibular disorders. Dentomaxillofac Radiol 1995; 24(2):128–131.
- Bailoor DN, Muralidhar M, Moola AD: Condylocoronal angle of the human mandible—its radiological implications. J Pierre Fauchard Acad 1994; 8(4):137–142.
- Muto T, Kohara M, Kanazawa M, Kawakami J: The position of the mandibular condyle at maximal mouth opening in normal subjects. J Oral Maxillofac Surg 1994; 52(12):1269–1272.
- Cobo J, Arguelles J, Vijande M, Costales M, Fernandez Y: Transcranial oblique lateral radiography to verify the position of the mandibular condyles with the use of functional appliances. Eur J Orthod 1993; 15(5):387–391.
- Cholitgul W, Petersson A, Rohlin M, Akerman S: 1990. Clinical and radiological findings in temporomandibular joints with disk perforation. Int J Oral Maxillofac Surg 1990; 19(4):220–225.
- Eriksson L, Westesson PL: Clinical and radiological study of patients with anterior disk displacement of the temporomandibular joint. Swed Dent J 1983; 7(2):55–64.
- Moloney F: Internal derangements of the temporomandibular joint. I. Clinical and radiological diagnosis. Aust Dent J 1985; 30(4):253–259.
- Solberg WK: Temporomandibular disorders: functional and radiological considerations. Br Dent J 1986; 160(6):195–200.
- Dixon DC: Indications and techniques for imaging the temporomandibular joint. In: Mohl ND, ed. Temporomandibular joint and masticatory muscle disorders. Copenhagen: Munksgaard 1994; 435–509.
- Ludlow JB, Davies KL, Tyndall DA: Temporomandibular joint imaging: a comparative study of diagnostic accuracy for the detection of bone change with biplanar multidirectional tomography and panoramic images. Oral Surg Oral Med Oral Pathol Oral Radiol Endod 1995; 80(6):735–743.
- Norusis MJ: SPSS for Windows. Base system user's guide. Release 6.0. Chicago, SPSS Inc., 1997.
- Murray S: Neural networks for statistical modeling. New York: Van Nostrand Reinhold Pub. 1993.
- Flitman AM: Towards analysing student failures: neural networks compared with regression analysis and multiple discriminant analysis. Computers and Operations Research 1997; 24(4):367–377.
- Tourassi GD, Floyd CE, Sostman HD, Coleman RE: Acute pulmonary embolism: artificial neural network approach for diagnosis. Radiol 1993; 189(2):357–359.
- Wu YC, Freedman MT, Hasegawa A, Zuurbier RA, Lo SC, Mun SK: Classification of microcalcifications in radiographs of pathologic specimens for the diagnosis of breast cancer. Academic Radiol 1995; 2(3):199–204.
- Duryea T, Zaim S, Wolfe F: Neural network based automated algorithm to identify joint locations on hand/wrist radiographs for arthritis assessment. Med Phys 2002; 29(3):403–411.
- Abe H, Ashizawa K, Li F, Matsuyama N, Fukushima A, Shiraishi J, MacMahon H, Doi K: Use of an artificial neural network to determine the diagnostic value of specific clinical and radiological parameters in the diagnosis of interstitial lung disease on chest radiographs. Academic Radiol 2002; 9(1):13–17.
- Orunesu E, et al.: Use of an artificial neural network to predict Graves' disease outcome within two years of drug withdrawal. Eur J Clin Investigation 2004; 34(3): 210–217.
- Schetinin V, Schult J. The combined technique for detection of artifacts in clinical electroencephalograms of sleeping newborns. IEEE Transactions on Information Technology in Biomedicine 2004; 8(1):28–35.
- Radke TC, Ketcham R, Glassman B, Kull R: Artificial neural network learns to differentiate normal TMJs and nonreducing displaced disks after training on incisor-point chewing movements. J Craniomandib Pract 2003; 21(4):259–264. [erratum appears in J Craniomandib Pract 2004; 22(1):A–51.
- Lisboa PGA: A review of evidence of health benefit from artificial neural net-works in medical intervention. Neural Networks 2002; 15:11–39.
- Picton P: Introduction to neural networks. London: McMillan, 1994.
- Hertz J, Krogh A, Palmer RG: Introduction to the theory of neural computations. Redwood City, CA: Addison Wesley Pub. Co. 1990:115, 163, 251.
- Blaschke DD, Blaschke TJ: Normal TMJ bone relationships in centric occlusion. J Dent Res 1981; 60:98.
- Aquilino SA, Matteson SR, Holland GA: Evaluation of condylar position from temporomandibular joint radiographs. J Prosthet Dent 1985; 53(1):88–91.
- Gray RJ, Quayle AA, Horner K, Al-Gorashi AJ: The effects of positioning variations in transcranial radiographs of the temporomandibular joint: a laboratory study. Br J Oral Maxillofac Surg 1991; 29(4):241–249. [erratum appears in Br J Oral Mcvcillofac Surg 1991; 29(6):424].
- Smith SR, Matteson SR, Phillips C, Tyndall DA: Quantitative and subjective analysis of temporomandibular joint radiographs. J Prosthet Dent 1989; 62(4):456–463.
- Ichikawa W, Laskin DM, Rosenberg HM: Transcranial radiographic and tomographic analysis of the lateral and midpoint inclined planes of the articular eminence. Oral Surg Oral Med Oral Pathol 1990; 70(4):516–522.
- Van Sickels JE, Bianco Jr. HJ, Pifer RG: Transcranial radiographs in the evaluation of craniomandibular (TMJ) disorders. J Prosthet Dent 1983; 49(2): 244–249.
- Keiser J, Panting N, Dias G, Thackeray F: Basicranial flexion and glenoidal morphology in humans. Perspectives in Human Biology 1999; 4(3):127–133.
- Wamke T, Carls FR, Sailer I-IF: A new method for assessing the temporo-mandibular joint quantitatively by dental scan. J Craniomaxillofac Surg 1996; 24(3):168–172.
- Kundinger KK, Austin BP, Christensen LV, Donegan SJ, Ferguson DJ: An evaluation of temporomandibular joints and jaw muscles after orthodontic treatment involving premolar extractions. Am J Orthod Dentofac Orthop 1991; 100(2):110–115.
- Ludlow JB, Soltmann R, Tyndall DA, Grady JJ: Accuracy of quantification of mandibular condyle displacement in digitally subtracted linear tomograms. Dentomcvcillofac Radiol 1992; 21(2):83–87.
- Farrar WB: Characteristics of the condylar path in internal derangements of the TMJ. J Prosthet Dent 1978; 39:319.
- Kononen M, Kilpinen E: Comparison of three radiographic methods in screening of temporomandibular joint involvement in patients with psoriatic arthritis. Acta Odontol Scand 1990; 48(4):271–277.
- Kvien TK, Larheim TA, Hoyeraal HM, Sandstad B: Radiographic temporomandibular joint abnormalities in patients with juvenile chronic arthritis during a controlled study of sodium aurothiomalate and D-penicillamine. Br J Rheumatol 1986; 25(1):59–66.
- Mejersjo C, Hollender L: Radiography of the temporomandibular joint in female patients with TMJ pain or dysfunction. A seven year follow-up. Acta Radiol [Diagm] 1984; 25(3):169–176.
- Mongini F: The importance of radiography in the diagnosis of TMJ dysfunctions. A comparative evaluation of transcranial radiographs and serial tomography. J Prosthet Dent 1981; 45(2): 186–198.
- Rieder CE, Martinoff JT: Comparison of the multiphasic dysfunction profile with lateral transcranial radiographs. J Prosthet Dent 1984; 52(4):572–580.
- Weinberg LA: Correlation of temporomandibular dysfunction with radiographic findings. J Prosthet Dent 1972; 28:519.
- Salchenberger L, Venta ER, Venta LA: Using neural networks to aid the diagnosis of breast implant rupture. Computers and Operations Research 1997; 24(5):435–444.
- Brockett PL, Cooper WW, Golden LL, Xia X: A case study in applying neural networks to predicting insolvency for property and casualty insurers. J Operational Res Soc 1997; 48:1153–1162.