Skip to main content
Erschienen in: European Archives of Oto-Rhino-Laryngology 5/2024

23.02.2024 | Miscellaneous

An introduction to machine learning and generative artificial intelligence for otolaryngologists—head and neck surgeons: a narrative review

verfasst von: Isaac L. Alter, Karly Chan, Jérome Lechien, Anaïs Rameau

Erschienen in: European Archives of Oto-Rhino-Laryngology | Ausgabe 5/2024

Einloggen, um Zugang zu erhalten

Abstract

Purpose

Despite the robust expansion of research surrounding artificial intelligence (AI) and machine learning (ML) and their applications to medicine, these methodologies often remain opaque and inaccessible to many otolaryngologists. Especially, with the increasing ubiquity of large-language models (LLMs), such as ChatGPT and their potential implementation in clinical practice, clinicians may benefit from a baseline understanding of some aspects of AI. In this narrative review, we seek to clarify underlying concepts, illustrate applications to otolaryngology, and highlight future directions and limitations of these tools.

Methods

Recent literature regarding AI principles and otolaryngologic applications of ML and LLMs was reviewed via search in PubMed and Google Scholar.

Results

Significant recent strides have been made in otolaryngology research utilizing AI and ML, across all subspecialties, including neurotology, head and neck oncology, laryngology, rhinology, and sleep surgery. Potential applications suggested by recent publications include screening and diagnosis, predictive tools, clinical decision support, and clinical workflow improvement via LLMs. Ongoing concerns regarding AI in medicine include ethical concerns around bias and data sharing, as well as the “black box” problem and limitations in explainability.

Conclusions

Potential implementations of AI in otolaryngology are rapidly expanding. While implementation in clinical practice remains theoretical for most of these tools, their potential power to influence the practice of otolaryngology is substantial.

Level of evidence

4.
Literatur
2.
Zurück zum Zitat Habehh H, Gohel S (2021) Machine learning in healthcare. Curr Genom 22:291–300CrossRef Habehh H, Gohel S (2021) Machine learning in healthcare. Curr Genom 22:291–300CrossRef
3.
Zurück zum Zitat Alabi RO, Almangush A, Elmusrati M, Leivo I, Makitie AA (2022) An interpretable machine learning prognostic system for risk stratification in oropharyngeal cancer. Int J Med Inform 168:104896PubMedCrossRef Alabi RO, Almangush A, Elmusrati M, Leivo I, Makitie AA (2022) An interpretable machine learning prognostic system for risk stratification in oropharyngeal cancer. Int J Med Inform 168:104896PubMedCrossRef
4.
Zurück zum Zitat Howard FM, Kochanny S, Koshy M, Spiotto M, Pearson AT (2020) Machine learning-guided adjuvant treatment of head and neck cancer. JAMA Netw Open 3:e2025881PubMedPubMedCentralCrossRef Howard FM, Kochanny S, Koshy M, Spiotto M, Pearson AT (2020) Machine learning-guided adjuvant treatment of head and neck cancer. JAMA Netw Open 3:e2025881PubMedPubMedCentralCrossRef
5.
Zurück zum Zitat Wu Z, Lin Z, Li L et al (2021) Deep learning for classification of pediatric otitis media. Laryngoscope 131:E2344–E2351PubMedCrossRef Wu Z, Lin Z, Li L et al (2021) Deep learning for classification of pediatric otitis media. Laryngoscope 131:E2344–E2351PubMedCrossRef
6.
Zurück zum Zitat Peng X, Xu H, Liu J, Wang J, He C (2023) Voice disorder classification using convolutional neural network based on deep transfer learning. Sci Rep 13:7264PubMedPubMedCentralCrossRef Peng X, Xu H, Liu J, Wang J, He C (2023) Voice disorder classification using convolutional neural network based on deep transfer learning. Sci Rep 13:7264PubMedPubMedCentralCrossRef
8.
Zurück zum Zitat Liu Y, Chen PC, Krause J, Peng L (2019) How to read articles that use machine learning: users’ guides to the medical literature. JAMA 322:1806–1816PubMedCrossRef Liu Y, Chen PC, Krause J, Peng L (2019) How to read articles that use machine learning: users’ guides to the medical literature. JAMA 322:1806–1816PubMedCrossRef
9.
Zurück zum Zitat Giraldo-Roldan D, Ribeiro EC, Araújo AL, Penafort PV, Silva VM, Câmara J, Pontes HA, Martins MD, Oliveira MC, Santos-Silva AR, Lopes MA (2023) Deep learning applied to the histopathological diagnosis of ameloblastomas and ameloblastic carcinomas. J Oral Pathol Med 52(10):988–995PubMedCrossRef Giraldo-Roldan D, Ribeiro EC, Araújo AL, Penafort PV, Silva VM, Câmara J, Pontes HA, Martins MD, Oliveira MC, Santos-Silva AR, Lopes MA (2023) Deep learning applied to the histopathological diagnosis of ameloblastomas and ameloblastic carcinomas. J Oral Pathol Med 52(10):988–995PubMedCrossRef
10.
Zurück zum Zitat Rajpurkar P, Chen E, Banerjee O, Topol EJ (2022) AI in health and medicine. Nat Med 28:31–38PubMedCrossRef Rajpurkar P, Chen E, Banerjee O, Topol EJ (2022) AI in health and medicine. Nat Med 28:31–38PubMedCrossRef
11.
Zurück zum Zitat Kou W, Carlson DA, Baumann AJ et al (2022) A multi-stage machine learning model for diagnosis of esophageal manometry. Artif Intell Med 124:102233PubMedCrossRef Kou W, Carlson DA, Baumann AJ et al (2022) A multi-stage machine learning model for diagnosis of esophageal manometry. Artif Intell Med 124:102233PubMedCrossRef
12.
Zurück zum Zitat Esce A, Redemann JP, Olson GT et al (2023) Lymph node metastases in papillary thyroid carcinoma can be predicted by a convolutional neural network: a multi-institution study. Ann Otol Rhinol Laryngol 132:1373–1379PubMedCrossRef Esce A, Redemann JP, Olson GT et al (2023) Lymph node metastases in papillary thyroid carcinoma can be predicted by a convolutional neural network: a multi-institution study. Ann Otol Rhinol Laryngol 132:1373–1379PubMedCrossRef
13.
Zurück zum Zitat Esteva A, Robicquet A, Ramsundar B et al (2019) A guide to deep learning in healthcare. Nat Med 25:24–29PubMedCrossRef Esteva A, Robicquet A, Ramsundar B et al (2019) A guide to deep learning in healthcare. Nat Med 25:24–29PubMedCrossRef
14.
Zurück zum Zitat Greener JG, Kandathil SM, Moffat L, Jones DT (2022) A guide to machine learning for biologists. Nat Rev Mol Cell Biol 23:40–55PubMedCrossRef Greener JG, Kandathil SM, Moffat L, Jones DT (2022) A guide to machine learning for biologists. Nat Rev Mol Cell Biol 23:40–55PubMedCrossRef
15.
Zurück zum Zitat Shah NH, Entwistle D, Pfeffer MA (2023) Creation and adoption of large language models in medicine. JAMA 330:866–869PubMedCrossRef Shah NH, Entwistle D, Pfeffer MA (2023) Creation and adoption of large language models in medicine. JAMA 330:866–869PubMedCrossRef
16.
Zurück zum Zitat Thirunavukarasu AJ, Ting DSJ, Elangovan K, Gutierrez L, Tan TF, Ting DSW (2023) Large language models in medicine. Nat Med 29:1930–1940PubMedCrossRef Thirunavukarasu AJ, Ting DSJ, Elangovan K, Gutierrez L, Tan TF, Ting DSW (2023) Large language models in medicine. Nat Med 29:1930–1940PubMedCrossRef
18.
Zurück zum Zitat Luitse D, Denkena W (2021) The great Transformer: Examining the role of large language models in the political economy of AI. Big Data Soc 8:20539517211047736CrossRef Luitse D, Denkena W (2021) The great Transformer: Examining the role of large language models in the political economy of AI. Big Data Soc 8:20539517211047736CrossRef
20.
Zurück zum Zitat Viscaino M, Maass JC, Delano PH, Torrente M, Stott C, Auat CF (2020) Computer-aided diagnosis of external and middle ear conditions: a machine learning approach. PLoS ONE 15:e0229226PubMedPubMedCentralCrossRef Viscaino M, Maass JC, Delano PH, Torrente M, Stott C, Auat CF (2020) Computer-aided diagnosis of external and middle ear conditions: a machine learning approach. PLoS ONE 15:e0229226PubMedPubMedCentralCrossRef
21.
Zurück zum Zitat Crowson MG, Bates DW, Suresh K, Cohen MS, Hartnick CJ (2023) “Human vs Machine” validation of a deep learning algorithm for pediatric middle ear infection diagnosis. Otolaryngol Head Neck Surg 169:41–46PubMedPubMedCentralCrossRef Crowson MG, Bates DW, Suresh K, Cohen MS, Hartnick CJ (2023) “Human vs Machine” validation of a deep learning algorithm for pediatric middle ear infection diagnosis. Otolaryngol Head Neck Surg 169:41–46PubMedPubMedCentralCrossRef
22.
Zurück zum Zitat Kim JS, Kim BG, Hwang SH (2022) Efficacy of artificial intelligence-assisted discrimination of oral cancerous lesions from normal mucosa based on the oral mucosal image: a systematic review and meta-analysis. Cancers (Basel) 14:3499PubMedCrossRef Kim JS, Kim BG, Hwang SH (2022) Efficacy of artificial intelligence-assisted discrimination of oral cancerous lesions from normal mucosa based on the oral mucosal image: a systematic review and meta-analysis. Cancers (Basel) 14:3499PubMedCrossRef
23.
Zurück zum Zitat Elmakaty I, Elmarasi M, Amarah A, Abdo R, Malki MI (2022) Accuracy of artificial intelligence-assisted detection of oral squamous cell carcinoma: a systematic review and meta-analysis. Crit Rev Oncol Hematol 178:103777PubMedCrossRef Elmakaty I, Elmarasi M, Amarah A, Abdo R, Malki MI (2022) Accuracy of artificial intelligence-assisted detection of oral squamous cell carcinoma: a systematic review and meta-analysis. Crit Rev Oncol Hematol 178:103777PubMedCrossRef
24.
Zurück zum Zitat Taylor A, Habib AR, Kumar A, Wong E, Hasan Z, Singh N (2023) An artificial intelligence algorithm for the classification of sphenoid sinus pneumatisation on sinus computed tomography scans. Clin Otolaryngol 48(6):888–894PubMedCrossRef Taylor A, Habib AR, Kumar A, Wong E, Hasan Z, Singh N (2023) An artificial intelligence algorithm for the classification of sphenoid sinus pneumatisation on sinus computed tomography scans. Clin Otolaryngol 48(6):888–894PubMedCrossRef
25.
Zurück zum Zitat Bulfamante AM, Ferella F, Miller AM et al (2023) Artificial intelligence, machine learning, and deep learning in rhinology: a systematic review. Eur Arch Otorhinolaryngol 280:529–542PubMedCrossRef Bulfamante AM, Ferella F, Miller AM et al (2023) Artificial intelligence, machine learning, and deep learning in rhinology: a systematic review. Eur Arch Otorhinolaryngol 280:529–542PubMedCrossRef
26.
Zurück zum Zitat Compton EC, Cruz T, Andreassen M et al (2023) Developing an artificial intelligence tool to predict vocal cord pathology in primary care settings. Laryngoscope 133:1952–1960PubMedCrossRef Compton EC, Cruz T, Andreassen M et al (2023) Developing an artificial intelligence tool to predict vocal cord pathology in primary care settings. Laryngoscope 133:1952–1960PubMedCrossRef
27.
Zurück zum Zitat Cala F, Frassineti L, Manfredi C et al (2023) Machine learning assessment of spasmodic dysphonia based on acoustical and perceptual parameters. Bioengineering (Basel) 10:426PubMedCrossRef Cala F, Frassineti L, Manfredi C et al (2023) Machine learning assessment of spasmodic dysphonia based on acoustical and perceptual parameters. Bioengineering (Basel) 10:426PubMedCrossRef
29.
Zurück zum Zitat Reid J, Parmar P, Lund T, Aalto DK, Jeffery CC (2022) Development of a machine-learning based voice disorder screening tool. Am J Otolaryngol 43:103327PubMedCrossRef Reid J, Parmar P, Lund T, Aalto DK, Jeffery CC (2022) Development of a machine-learning based voice disorder screening tool. Am J Otolaryngol 43:103327PubMedCrossRef
30.
Zurück zum Zitat Hegde S, Sreeram S, Alter IL et al (2023) Cough sounds in screening and diagnostics: a scoping review. Laryngoscope 13:1023–1031 Hegde S, Sreeram S, Alter IL et al (2023) Cough sounds in screening and diagnostics: a scoping review. Laryngoscope 13:1023–1031
31.
Zurück zum Zitat Yao P, Usman M, Chen YH et al (2022) Applications of artificial intelligence to office laryngoscopy: a scoping review. Laryngoscope 132:1993–2016PubMedCrossRef Yao P, Usman M, Chen YH et al (2022) Applications of artificial intelligence to office laryngoscopy: a scoping review. Laryngoscope 132:1993–2016PubMedCrossRef
32.
Zurück zum Zitat Maniaci A, Riela PM, Iannella G et al (2023) Machine learning identification of obstructive sleep apnea severity through the patient clinical features: a retrospective study. Life (Basel) 13:702PubMed Maniaci A, Riela PM, Iannella G et al (2023) Machine learning identification of obstructive sleep apnea severity through the patient clinical features: a retrospective study. Life (Basel) 13:702PubMed
33.
Zurück zum Zitat Martin-Martinez A, Miro J, Amado C et al (2023) A Systematic and universal artificial intelligence screening method for oropharyngeal dysphagia: improving diagnosis through risk management. Dysphagia 38:1224–1237PubMedCrossRef Martin-Martinez A, Miro J, Amado C et al (2023) A Systematic and universal artificial intelligence screening method for oropharyngeal dysphagia: improving diagnosis through risk management. Dysphagia 38:1224–1237PubMedCrossRef
35.
Zurück zum Zitat Crowson MG, Dixon P, Mahmood R et al (2020) Predicting postoperative cochlear implant performance using supervised machine learning. Otol Neurotol 41:e1013–e1023PubMedCrossRef Crowson MG, Dixon P, Mahmood R et al (2020) Predicting postoperative cochlear implant performance using supervised machine learning. Otol Neurotol 41:e1013–e1023PubMedCrossRef
36.
Zurück zum Zitat Lu S, Xie J, Wei X et al (2022) Machine learning-based prediction of the outcomes of cochlear implantation in patients with cochlear nerve deficiency and normal cochlea: a 2-year follow-up of 70 children. Front Neurosci 16:895560PubMedPubMedCentralCrossRef Lu S, Xie J, Wei X et al (2022) Machine learning-based prediction of the outcomes of cochlear implantation in patients with cochlear nerve deficiency and normal cochlea: a 2-year follow-up of 70 children. Front Neurosci 16:895560PubMedPubMedCentralCrossRef
37.
Zurück zum Zitat Zeitler DM, Buchlak QD, Ramasundara S, Farrokhi F, Esmaili N (2023) Predicting acoustic hearing preservation following cochlear implant surgery using machine learning. Laryngoscope 134(2):926–936PubMedCrossRef Zeitler DM, Buchlak QD, Ramasundara S, Farrokhi F, Esmaili N (2023) Predicting acoustic hearing preservation following cochlear implant surgery using machine learning. Laryngoscope 134(2):926–936PubMedCrossRef
38.
Zurück zum Zitat Dixon PR, Wojdyla L, Lee J et al (2022) Machine learning to predict hearing preservation after middle cranial fossa approach for sporadic vestibular schwannomas. Otol Neurotol 43:1072–1077PubMedCrossRef Dixon PR, Wojdyla L, Lee J et al (2022) Machine learning to predict hearing preservation after middle cranial fossa approach for sporadic vestibular schwannomas. Otol Neurotol 43:1072–1077PubMedCrossRef
39.
Zurück zum Zitat Lotsch J, Hintschich CA, Petridis P, Pade J, Hummel T (2021) Machine-learning points at endoscopic, quality of life, and olfactory parameters as outcome criteria for endoscopic paranasal sinus surgery in chronic rhinosinusitis. J Clin Med 10:4245PubMedPubMedCentralCrossRef Lotsch J, Hintschich CA, Petridis P, Pade J, Hummel T (2021) Machine-learning points at endoscopic, quality of life, and olfactory parameters as outcome criteria for endoscopic paranasal sinus surgery in chronic rhinosinusitis. J Clin Med 10:4245PubMedPubMedCentralCrossRef
40.
Zurück zum Zitat Kim DK, Lim HS, Eun KM et al (2021) Subepithelial neutrophil infiltration as a predictor of the surgical outcome of chronic rhinosinusitis with nasal polyps. Rhinology 59:173–180PubMed Kim DK, Lim HS, Eun KM et al (2021) Subepithelial neutrophil infiltration as a predictor of the surgical outcome of chronic rhinosinusitis with nasal polyps. Rhinology 59:173–180PubMed
41.
Zurück zum Zitat Fujima N, Shimizu Y, Yoshida D et al (2019) Machine-learning-based prediction of treatment outcomes using MR imaging-derived quantitative tumor information in patients with sinonasal squamous cell carcinomas: a preliminary study. Cancers (Basel) 11:800PubMedCrossRef Fujima N, Shimizu Y, Yoshida D et al (2019) Machine-learning-based prediction of treatment outcomes using MR imaging-derived quantitative tumor information in patients with sinonasal squamous cell carcinomas: a preliminary study. Cancers (Basel) 11:800PubMedCrossRef
42.
Zurück zum Zitat Uhm T, Lee JE, Yi S et al (2021) Predicting hearing recovery following treatment of idiopathic sudden sensorineural hearing loss with machine learning models. Am J Otolaryngol 42:102858PubMedCrossRef Uhm T, Lee JE, Yi S et al (2021) Predicting hearing recovery following treatment of idiopathic sudden sensorineural hearing loss with machine learning models. Am J Otolaryngol 42:102858PubMedCrossRef
43.
Zurück zum Zitat Gathman TJ, Choi JS, Vasdev RMS, Schoephoerster JA, Adams ME (2023) Machine learning prediction of objective hearing loss with demographics, clinical factors, and subjective hearing status. Otolaryngol Head Neck Surg 169:504–513PubMedCrossRef Gathman TJ, Choi JS, Vasdev RMS, Schoephoerster JA, Adams ME (2023) Machine learning prediction of objective hearing loss with demographics, clinical factors, and subjective hearing status. Otolaryngol Head Neck Surg 169:504–513PubMedCrossRef
44.
Zurück zum Zitat Adeoye J, Tan JY, Choi SW, Thomson P (2021) Prediction models applying machine learning to oral cavity cancer outcomes: a systematic review. Int J Med Inform 154:104557PubMedCrossRef Adeoye J, Tan JY, Choi SW, Thomson P (2021) Prediction models applying machine learning to oral cavity cancer outcomes: a systematic review. Int J Med Inform 154:104557PubMedCrossRef
45.
Zurück zum Zitat Bensoussan Y, Vanstrum EB, Johns MM 3rd, Rameau A (2023) Artificial intelligence and laryngeal cancer: from screening to prognosis: a state of the art review. Otolaryngol Head Neck Surg 168:319–329PubMedCrossRef Bensoussan Y, Vanstrum EB, Johns MM 3rd, Rameau A (2023) Artificial intelligence and laryngeal cancer: from screening to prognosis: a state of the art review. Otolaryngol Head Neck Surg 168:319–329PubMedCrossRef
46.
Zurück zum Zitat Bourdillon AT, Shah HP, Cohen O, Hajek MA, Mehra S (2023) Novel machine learning model to predict interval of oral cancer recurrence for surveillance stratification. Laryngoscope 133:1652–1659PubMedCrossRef Bourdillon AT, Shah HP, Cohen O, Hajek MA, Mehra S (2023) Novel machine learning model to predict interval of oral cancer recurrence for surveillance stratification. Laryngoscope 133:1652–1659PubMedCrossRef
47.
Zurück zum Zitat Chiesa-Estomba CM, Grana M, Medela A et al (2022) Machine learning algorithms as a computer-assisted decision tool for oral cancer prognosis and management decisions: a systematic review. ORL J Otorhinolaryngol Relat Spec 84:278–288PubMedCrossRef Chiesa-Estomba CM, Grana M, Medela A et al (2022) Machine learning algorithms as a computer-assisted decision tool for oral cancer prognosis and management decisions: a systematic review. ORL J Otorhinolaryngol Relat Spec 84:278–288PubMedCrossRef
48.
Zurück zum Zitat Petruzzi G, Coden E, Iocca O et al (2023) Machine learning in laryngeal cancer: a pilot study to predict oncological outcomes and the role of adverse features. Head Neck 45:2068–2078PubMedCrossRef Petruzzi G, Coden E, Iocca O et al (2023) Machine learning in laryngeal cancer: a pilot study to predict oncological outcomes and the role of adverse features. Head Neck 45:2068–2078PubMedCrossRef
49.
Zurück zum Zitat Kishimoto-Urata M, Urata S, Nishijima H et al (2023) Predicting synkinesis caused by Bell’s palsy or Ramsay Hunt syndrome using machine learning-based logistic regression. Laryngosc Investig Otolaryngol 8(5):1189–1195CrossRef Kishimoto-Urata M, Urata S, Nishijima H et al (2023) Predicting synkinesis caused by Bell’s palsy or Ramsay Hunt syndrome using machine learning-based logistic regression. Laryngosc Investig Otolaryngol 8(5):1189–1195CrossRef
50.
Zurück zum Zitat Chen SL, Chin SC, Chan KC, Ho CY (2023) A machine learning approach to assess patients with deep neck infection progression to descending mediastinitis: preliminary results. Diagnostics (Basel) 13:2736PubMedCrossRef Chen SL, Chin SC, Chan KC, Ho CY (2023) A machine learning approach to assess patients with deep neck infection progression to descending mediastinitis: preliminary results. Diagnostics (Basel) 13:2736PubMedCrossRef
51.
Zurück zum Zitat Formeister EJ, Baum R, Knott PD et al (2020) Machine learning for predicting complications in head and neck microvascular free tissue transfer. Laryngoscope 130:E843–E849PubMedCrossRef Formeister EJ, Baum R, Knott PD et al (2020) Machine learning for predicting complications in head and neck microvascular free tissue transfer. Laryngoscope 130:E843–E849PubMedCrossRef
52.
Zurück zum Zitat Hu X, Yang Z, Ma Y et al (2023) Development and validation of a machine learning-based predictive model for secondary post-tonsillectomy hemorrhage. Front Surg 10:1114922PubMedPubMedCentralCrossRef Hu X, Yang Z, Ma Y et al (2023) Development and validation of a machine learning-based predictive model for secondary post-tonsillectomy hemorrhage. Front Surg 10:1114922PubMedPubMedCentralCrossRef
53.
Zurück zum Zitat Miller LE, Goedicke W, Crowson MG, Rathi VK, Naunheim MR, Agarwala AV (2023) Using machine learning to predict operating room case duration: a case study in otolaryngology. Otolaryngol Head Neck Surg 168:241–247PubMedCrossRef Miller LE, Goedicke W, Crowson MG, Rathi VK, Naunheim MR, Agarwala AV (2023) Using machine learning to predict operating room case duration: a case study in otolaryngology. Otolaryngol Head Neck Surg 168:241–247PubMedCrossRef
54.
Zurück zum Zitat Goshtasbi K, Yasaka TM, Zandi-Toghani M et al (2021) Machine learning models to predict length of stay and discharge destination in complex head and neck surgery. Head Neck 43:788–797PubMedCrossRef Goshtasbi K, Yasaka TM, Zandi-Toghani M et al (2021) Machine learning models to predict length of stay and discharge destination in complex head and neck surgery. Head Neck 43:788–797PubMedCrossRef
55.
Zurück zum Zitat Shew M, New J, Bur AM (2019) Machine learning to predict delays in adjuvant radiation following surgery for head and neck cancer. Otolaryngol Head Neck Surg 160:1058–1064PubMedCrossRef Shew M, New J, Bur AM (2019) Machine learning to predict delays in adjuvant radiation following surgery for head and neck cancer. Otolaryngol Head Neck Surg 160:1058–1064PubMedCrossRef
56.
Zurück zum Zitat Noel CW, Sutradhar R, Gotlib Conn L et al (2022) Development and validation of a machine learning algorithm predicting emergency department use and unplanned hospitalization in patients with head and neck cancer. JAMA Otolaryngol Head Neck Surg 148:764–772PubMedPubMedCentralCrossRef Noel CW, Sutradhar R, Gotlib Conn L et al (2022) Development and validation of a machine learning algorithm predicting emergency department use and unplanned hospitalization in patients with head and neck cancer. JAMA Otolaryngol Head Neck Surg 148:764–772PubMedPubMedCentralCrossRef
57.
Zurück zum Zitat Ahervo H, Korhonen J, Wei L, Ming S et al (2023) Artificial intelligence-supported applications in head and neck cancer radiotherapy treatment planning and dose optimisation. Radiography (Lond) 29:496–502PubMedCrossRef Ahervo H, Korhonen J, Wei L, Ming S et al (2023) Artificial intelligence-supported applications in head and neck cancer radiotherapy treatment planning and dose optimisation. Radiography (Lond) 29:496–502PubMedCrossRef
58.
Zurück zum Zitat Sher DJ, Godley A, Park Y et al (2021) Prospective study of artificial intelligence-based decision support to improve head and neck radiotherapy plan quality. Clin Transl Radiat Oncol 29:65–70PubMedPubMedCentral Sher DJ, Godley A, Park Y et al (2021) Prospective study of artificial intelligence-based decision support to improve head and neck radiotherapy plan quality. Clin Transl Radiat Oncol 29:65–70PubMedPubMedCentral
59.
60.
Zurück zum Zitat Ng WT, But B, Choi HCW et al (2022) Application of artificial intelligence for nasopharyngeal carcinoma management—a systematic review. Cancer Manag Res 14:339–366PubMedPubMedCentralCrossRef Ng WT, But B, Choi HCW et al (2022) Application of artificial intelligence for nasopharyngeal carcinoma management—a systematic review. Cancer Manag Res 14:339–366PubMedPubMedCentralCrossRef
61.
Zurück zum Zitat Zhong L, Dong D, Fang X et al (2021) A deep learning-based radiomic nomogram for prognosis and treatment decision in advanced nasopharyngeal carcinoma: a multicentre study. EBioMedicine 70:103522PubMedPubMedCentralCrossRef Zhong L, Dong D, Fang X et al (2021) A deep learning-based radiomic nomogram for prognosis and treatment decision in advanced nasopharyngeal carcinoma: a multicentre study. EBioMedicine 70:103522PubMedPubMedCentralCrossRef
62.
Zurück zum Zitat Oliver JR, Karadaghy OA, Fassas SN, Arambula Z, Bur AM (2022) Machine learning directed sentinel lymph node biopsy in cutaneous head and neck melanoma. Head Neck 44:975–988PubMedCrossRef Oliver JR, Karadaghy OA, Fassas SN, Arambula Z, Bur AM (2022) Machine learning directed sentinel lymph node biopsy in cutaneous head and neck melanoma. Head Neck 44:975–988PubMedCrossRef
63.
Zurück zum Zitat You E, Lin V, Mijovic T, Eskander A, Crowson MG (2020) Artificial intelligence applications in otology: a state of the art review. Otolaryngol Head Neck Surg 163:1123–1133PubMedCrossRef You E, Lin V, Mijovic T, Eskander A, Crowson MG (2020) Artificial intelligence applications in otology: a state of the art review. Otolaryngol Head Neck Surg 163:1123–1133PubMedCrossRef
64.
Zurück zum Zitat Wathour J, Govaerts PJ, Lacroix E, Naima D (2023) Effect of a CI programming fitting tool with artificial intelligence in experienced cochlear implant patients. Otol Neurotol 44:209–215PubMedCrossRef Wathour J, Govaerts PJ, Lacroix E, Naima D (2023) Effect of a CI programming fitting tool with artificial intelligence in experienced cochlear implant patients. Otol Neurotol 44:209–215PubMedCrossRef
65.
Zurück zum Zitat Du Y, Ren L, Liu X, Wu Z (2022) Machine learning method intervention: determine proper screening tests for vestibular disorders. Auris Nasus Larynx 49:564–570PubMedCrossRef Du Y, Ren L, Liu X, Wu Z (2022) Machine learning method intervention: determine proper screening tests for vestibular disorders. Auris Nasus Larynx 49:564–570PubMedCrossRef
66.
Zurück zum Zitat Tarnowska KA, Ras ZW, Jastreboff PJ (2022) A data-driven approach to clinical decision support in tinnitus retraining therapy. Front Neuroinform 16:934433PubMedPubMedCentralCrossRef Tarnowska KA, Ras ZW, Jastreboff PJ (2022) A data-driven approach to clinical decision support in tinnitus retraining therapy. Front Neuroinform 16:934433PubMedPubMedCentralCrossRef
67.
69.
Zurück zum Zitat Zhong NN, Wang HQ, Huang XY et al (2023) Enhancing head and neck tumor management with artificial intelligence: integration and perspectives. Semin Cancer Biol 95:52–74PubMedCrossRef Zhong NN, Wang HQ, Huang XY et al (2023) Enhancing head and neck tumor management with artificial intelligence: integration and perspectives. Semin Cancer Biol 95:52–74PubMedCrossRef
70.
Zurück zum Zitat Jin Y, Wang Z, Tang W, Liao M, Wu X, Wang H (2022) An integrated analysis of prognostic signature and immune microenvironment in tongue squamous cell carcinoma. Front Oncol 12:891716PubMedPubMedCentralCrossRef Jin Y, Wang Z, Tang W, Liao M, Wu X, Wang H (2022) An integrated analysis of prognostic signature and immune microenvironment in tongue squamous cell carcinoma. Front Oncol 12:891716PubMedPubMedCentralCrossRef
71.
Zurück zum Zitat Zhu Y, Yao W, Xu BC et al (2021) Predicting response to immunotherapy plus chemotherapy in patients with esophageal squamous cell carcinoma using non-invasive Radiomic biomarkers. BMC Cancer 21:1167PubMedPubMedCentralCrossRef Zhu Y, Yao W, Xu BC et al (2021) Predicting response to immunotherapy plus chemotherapy in patients with esophageal squamous cell carcinoma using non-invasive Radiomic biomarkers. BMC Cancer 21:1167PubMedPubMedCentralCrossRef
72.
Zurück zum Zitat Qi W, Abu-Hanna A, van Esch TEM et al (2021) Explaining heterogeneity of individual treatment causal effects by subgroup discovery: an observational case study in antibiotics treatment of acute rhino-sinusitis. Artif Intell Med 116:102080PubMedCrossRef Qi W, Abu-Hanna A, van Esch TEM et al (2021) Explaining heterogeneity of individual treatment causal effects by subgroup discovery: an observational case study in antibiotics treatment of acute rhino-sinusitis. Artif Intell Med 116:102080PubMedCrossRef
73.
Zurück zum Zitat Chiesa-Estomba CM, Lechien JR, Vaira LA et al (2023) Exploring the potential of Chat-GPT as a supportive tool for sialendoscopy clinical decision making and patient information support. Eur Arch Otorhinolaryngol 1–6 Chiesa-Estomba CM, Lechien JR, Vaira LA et al (2023) Exploring the potential of Chat-GPT as a supportive tool for sialendoscopy clinical decision making and patient information support. Eur Arch Otorhinolaryngol 1–6
74.
Zurück zum Zitat Qu RW, Qureshi U, Petersen G, Lee SC (2023) Diagnostic and management applications of ChatGPT in structured otolaryngology clinical scenarios. OTO Open 7:e67PubMedPubMedCentralCrossRef Qu RW, Qureshi U, Petersen G, Lee SC (2023) Diagnostic and management applications of ChatGPT in structured otolaryngology clinical scenarios. OTO Open 7:e67PubMedPubMedCentralCrossRef
75.
Zurück zum Zitat Chee J, Kwa ED, Goh X (2023) “Vertigo, likely peripheral”: the dizzying rise of ChatGPT. Eur Arch Otorhinolaryngol 280:4687–4689PubMedCrossRef Chee J, Kwa ED, Goh X (2023) “Vertigo, likely peripheral”: the dizzying rise of ChatGPT. Eur Arch Otorhinolaryngol 280:4687–4689PubMedCrossRef
76.
Zurück zum Zitat Nielsen JPS, von Buchwald C, Gronhoj C (2023) Validity of the large language model ChatGPT (GPT4) as a patient information source in otolaryngology by a variety of doctors in a tertiary otorhinolaryngology department. Acta Otolaryngol 143(9):779–782.PubMedCrossRef Nielsen JPS, von Buchwald C, Gronhoj C (2023) Validity of the large language model ChatGPT (GPT4) as a patient information source in otolaryngology by a variety of doctors in a tertiary otorhinolaryngology department. Acta Otolaryngol 143(9):779–782.PubMedCrossRef
77.
Zurück zum Zitat Lechien JR, Maniaci A, Gengler I, Hans S, Chiesa-Estomba CM, Vaira LA (2023) Validity and reliability of an instrument evaluating the performance of intelligent chatbot: the Artificial Intelligence Performance Instrument (AIPI). Eur Arch Otorhinolaryngol 1–7 Lechien JR, Maniaci A, Gengler I, Hans S, Chiesa-Estomba CM, Vaira LA (2023) Validity and reliability of an instrument evaluating the performance of intelligent chatbot: the Artificial Intelligence Performance Instrument (AIPI). Eur Arch Otorhinolaryngol 1–7
78.
Zurück zum Zitat Lee P, Bubeck S, Petro J (2023) Benefits, Limits, and Risks of GPT-4 as an AI Chatbot for Medicine. N Engl J Med 388:1233–1239PubMedCrossRef Lee P, Bubeck S, Petro J (2023) Benefits, Limits, and Risks of GPT-4 as an AI Chatbot for Medicine. N Engl J Med 388:1233–1239PubMedCrossRef
80.
Zurück zum Zitat Larrow DR, Kadosh OK, Fracchia S, Radano M, Hartnick CJ (2023) Harnessing the power of electronic health records and open natural language data mining to capture meaningful patient experience during routine clinical care. Int J Pediatr Otorhinolaryngol 173:111698PubMedCrossRef Larrow DR, Kadosh OK, Fracchia S, Radano M, Hartnick CJ (2023) Harnessing the power of electronic health records and open natural language data mining to capture meaningful patient experience during routine clinical care. Int J Pediatr Otorhinolaryngol 173:111698PubMedCrossRef
81.
Zurück zum Zitat Manchaiah V, Londero A, Deshpande AK et al (2022) Online discussions about tinnitus: what can we learn from natural language processing of reddit posts? Am J Audiol 31:993–1002PubMedCrossRef Manchaiah V, Londero A, Deshpande AK et al (2022) Online discussions about tinnitus: what can we learn from natural language processing of reddit posts? Am J Audiol 31:993–1002PubMedCrossRef
82.
Zurück zum Zitat Vasan V, Cheng CP, Lerner DK, Vujovic D, van Gerwen M, Iloreta AM (2023) A natural language processing approach to uncover patterns among online ratings of otolaryngologists. J Laryngol Otol 137(12):1384-1388PubMedCrossRef Vasan V, Cheng CP, Lerner DK, Vujovic D, van Gerwen M, Iloreta AM (2023) A natural language processing approach to uncover patterns among online ratings of otolaryngologists. J Laryngol Otol 137(12):1384-1388PubMedCrossRef
83.
84.
Zurück zum Zitat Tama BA, Kim DH, Kim G, Kim SW, Lee S (2020) Recent advances in the application of artificial intelligence in otorhinolaryngology-head and neck surgery. Clin Exp Otorhinolaryngol 13:326–339PubMedPubMedCentralCrossRef Tama BA, Kim DH, Kim G, Kim SW, Lee S (2020) Recent advances in the application of artificial intelligence in otorhinolaryngology-head and neck surgery. Clin Exp Otorhinolaryngol 13:326–339PubMedPubMedCentralCrossRef
85.
Zurück zum Zitat Aggarwal P, Papay FA (2022) Artificial intelligence image recognition of melanoma and basal cell carcinoma in racially diverse populations. J Dermatolog Treat 33:2257–2262PubMedCrossRef Aggarwal P, Papay FA (2022) Artificial intelligence image recognition of melanoma and basal cell carcinoma in racially diverse populations. J Dermatolog Treat 33:2257–2262PubMedCrossRef
86.
Zurück zum Zitat Obermeyer Z, Powers B, Vogeli C, Mullainathan S (2019) Dissecting racial bias in an algorithm used to manage the health of populations. Science 366:447–453PubMedCrossRef Obermeyer Z, Powers B, Vogeli C, Mullainathan S (2019) Dissecting racial bias in an algorithm used to manage the health of populations. Science 366:447–453PubMedCrossRef
87.
Zurück zum Zitat Jain A, Brooks JR, Alford CC et al (2023) Awareness of racial and ethnic bias and potential solutions to address bias with use of health care algorithms. JAMA Health Forum 4:e231197PubMedPubMedCentralCrossRef Jain A, Brooks JR, Alford CC et al (2023) Awareness of racial and ethnic bias and potential solutions to address bias with use of health care algorithms. JAMA Health Forum 4:e231197PubMedPubMedCentralCrossRef
88.
Zurück zum Zitat Vokinger KN, Feuerriegel S, Kesselheim AS (2021) Mitigating bias in machine learning for medicine. Commun Med (Lond) 1:25PubMedCrossRef Vokinger KN, Feuerriegel S, Kesselheim AS (2021) Mitigating bias in machine learning for medicine. Commun Med (Lond) 1:25PubMedCrossRef
89.
Metadaten
Titel
An introduction to machine learning and generative artificial intelligence for otolaryngologists—head and neck surgeons: a narrative review
verfasst von
Isaac L. Alter
Karly Chan
Jérome Lechien
Anaïs Rameau
Publikationsdatum
23.02.2024
Verlag
Springer Berlin Heidelberg
Erschienen in
European Archives of Oto-Rhino-Laryngology / Ausgabe 5/2024
Print ISSN: 0937-4477
Elektronische ISSN: 1434-4726
DOI
https://doi.org/10.1007/s00405-024-08512-4

Weitere Artikel der Ausgabe 5/2024

European Archives of Oto-Rhino-Laryngology 5/2024 Zur Ausgabe

Erhebliches Risiko für Kehlkopfkrebs bei mäßiger Dysplasie

29.05.2024 Larynxkarzinom Nachrichten

Fast ein Viertel der Personen mit mäßig dysplastischen Stimmlippenläsionen entwickelt einen Kehlkopftumor. Solche Personen benötigen daher eine besonders enge ärztliche Überwachung.

Hörschwäche erhöht Demenzrisiko unabhängig von Beta-Amyloid

29.05.2024 Hörstörungen Nachrichten

Hört jemand im Alter schlecht, nimmt das Hirn- und Hippocampusvolumen besonders schnell ab, was auch mit einem beschleunigten kognitiven Abbau einhergeht. Und diese Prozesse scheinen sich unabhängig von der Amyloidablagerung zu ereignen.

„Übersichtlicher Wegweiser“: Lauterbachs umstrittener Klinik-Atlas ist online

17.05.2024 Klinik aktuell Nachrichten

Sie sei „ethisch geboten“, meint Gesundheitsminister Karl Lauterbach: mehr Transparenz über die Qualität von Klinikbehandlungen. Um sie abzubilden, lässt er gegen den Widerstand vieler Länder einen virtuellen Klinik-Atlas freischalten.

Betalaktam-Allergie: praxisnahes Vorgehen beim Delabeling

16.05.2024 Pädiatrische Allergologie Nachrichten

Die große Mehrheit der vermeintlichen Penicillinallergien sind keine. Da das „Etikett“ Betalaktam-Allergie oft schon in der Kindheit erworben wird, kann ein frühzeitiges Delabeling lebenslange Vorteile bringen. Ein Team von Pädiaterinnen und Pädiatern aus Kanada stellt vor, wie sie dabei vorgehen.

Update HNO

Bestellen Sie unseren Fach-Newsletter und bleiben Sie gut informiert – ganz bequem per eMail.