An artificial intelligence model for predicting an appropriate mAs with target exposure indicator for chest digital radiography
In digital radiography, image quality is synergistically affected by anatomy-specific examinations, exposure factors, body parameters, detector types, and vendors/systems. However, estimating appropriate exposure factors before radiography with optimized image quality without overexposure or underex...
Saved in:
Published in | Scientific reports Vol. 15; no. 1; pp. 11942 - 10 |
---|---|
Main Authors | , , , , |
Format | Journal Article |
Language | English |
Published |
London
Nature Publishing Group UK
08.04.2025
Nature Publishing Group Nature Portfolio |
Subjects | |
Online Access | Get full text |
Cover
Loading…
Abstract | In digital radiography, image quality is synergistically affected by anatomy-specific examinations, exposure factors, body parameters, detector types, and vendors/systems. However, estimating appropriate exposure factors before radiography with optimized image quality without overexposure or underexposure to patients is difficult. Thus, there is an unmet need to establish a model to predict appropriate mAs for optimizing image quality before radiography. This study aimed to establish a machine learning (ML) model for predicting an appropriate current–time product (mAs) using the target exposure indicator in chest digital radiography. An anthropomorphic chest phantom was used to establish a target exposure indicator which was used to define overexposure and underexposure in the human study. This study enrolled 1,000 (M/F = 915/85) subjects who underwent regular chest radiography. The chest thickness, height, weight, body mass index, mAs, and concomitant reached exposure (REX) were recorded. To construct the prediction model, the dataset was randomly separated into training (80%) and testing (20%) sets by matching their demographic characteristics. Five ML models were trained using the training set with 10-fold cross validation, and the model performance was evaluated using the testing set with correlation coefficients, root–mean–square error, and mean average error. The phantom study showed that the average REX was 355.6 which served as the target exposure indicator. In human study, the comparisons showed that the artificial neural network (ANN) model was the most suitable for predicting both REX and mAs values. The results demonstrated that, on average, the predicted mAs values were 10% lower and 8% higher than the values determined by AEC in the overexposure (REX > 355.6) and underexposure (REX < 355.6) groups, respectively. Moreover, the predicted mAs values were further reduced in all patients when lowering the target REX values. We concluded that the ML approach was feasible for building an artificial intelligence model for predicting appropriate mAs with target exposure indicator for chest digital radiography. |
---|---|
AbstractList | In digital radiography, image quality is synergistically affected by anatomy-specific examinations, exposure factors, body parameters, detector types, and vendors/systems. However, estimating appropriate exposure factors before radiography with optimized image quality without overexposure or underexposure to patients is difficult. Thus, there is an unmet need to establish a model to predict appropriate mAs for optimizing image quality before radiography. This study aimed to establish a machine learning (ML) model for predicting an appropriate current–time product (mAs) using the target exposure indicator in chest digital radiography. An anthropomorphic chest phantom was used to establish a target exposure indicator which was used to define overexposure and underexposure in the human study. This study enrolled 1,000 (M/F = 915/85) subjects who underwent regular chest radiography. The chest thickness, height, weight, body mass index, mAs, and concomitant reached exposure (REX) were recorded. To construct the prediction model, the dataset was randomly separated into training (80%) and testing (20%) sets by matching their demographic characteristics. Five ML models were trained using the training set with 10-fold cross validation, and the model performance was evaluated using the testing set with correlation coefficients, root–mean–square error, and mean average error. The phantom study showed that the average REX was 355.6 which served as the target exposure indicator. In human study, the comparisons showed that the artificial neural network (ANN) model was the most suitable for predicting both REX and mAs values. The results demonstrated that, on average, the predicted mAs values were 10% lower and 8% higher than the values determined by AEC in the overexposure (REX > 355.6) and underexposure (REX < 355.6) groups, respectively. Moreover, the predicted mAs values were further reduced in all patients when lowering the target REX values. We concluded that the ML approach was feasible for building an artificial intelligence model for predicting appropriate mAs with target exposure indicator for chest digital radiography. Abstract In digital radiography, image quality is synergistically affected by anatomy-specific examinations, exposure factors, body parameters, detector types, and vendors/systems. However, estimating appropriate exposure factors before radiography with optimized image quality without overexposure or underexposure to patients is difficult. Thus, there is an unmet need to establish a model to predict appropriate mAs for optimizing image quality before radiography. This study aimed to establish a machine learning (ML) model for predicting an appropriate current–time product (mAs) using the target exposure indicator in chest digital radiography. An anthropomorphic chest phantom was used to establish a target exposure indicator which was used to define overexposure and underexposure in the human study. This study enrolled 1,000 (M/F = 915/85) subjects who underwent regular chest radiography. The chest thickness, height, weight, body mass index, mAs, and concomitant reached exposure (REX) were recorded. To construct the prediction model, the dataset was randomly separated into training (80%) and testing (20%) sets by matching their demographic characteristics. Five ML models were trained using the training set with 10-fold cross validation, and the model performance was evaluated using the testing set with correlation coefficients, root–mean–square error, and mean average error. The phantom study showed that the average REX was 355.6 which served as the target exposure indicator. In human study, the comparisons showed that the artificial neural network (ANN) model was the most suitable for predicting both REX and mAs values. The results demonstrated that, on average, the predicted mAs values were 10% lower and 8% higher than the values determined by AEC in the overexposure (REX > 355.6) and underexposure (REX < 355.6) groups, respectively. Moreover, the predicted mAs values were further reduced in all patients when lowering the target REX values. We concluded that the ML approach was feasible for building an artificial intelligence model for predicting appropriate mAs with target exposure indicator for chest digital radiography. In digital radiography, image quality is synergistically affected by anatomy-specific examinations, exposure factors, body parameters, detector types, and vendors/systems. However, estimating appropriate exposure factors before radiography with optimized image quality without overexposure or underexposure to patients is difficult. Thus, there is an unmet need to establish a model to predict appropriate mAs for optimizing image quality before radiography. This study aimed to establish a machine learning (ML) model for predicting an appropriate current-time product (mAs) using the target exposure indicator in chest digital radiography. An anthropomorphic chest phantom was used to establish a target exposure indicator which was used to define overexposure and underexposure in the human study. This study enrolled 1,000 (M/F = 915/85) subjects who underwent regular chest radiography. The chest thickness, height, weight, body mass index, mAs, and concomitant reached exposure (REX) were recorded. To construct the prediction model, the dataset was randomly separated into training (80%) and testing (20%) sets by matching their demographic characteristics. Five ML models were trained using the training set with 10-fold cross validation, and the model performance was evaluated using the testing set with correlation coefficients, root-mean-square error, and mean average error. The phantom study showed that the average REX was 355.6 which served as the target exposure indicator. In human study, the comparisons showed that the artificial neural network (ANN) model was the most suitable for predicting both REX and mAs values. The results demonstrated that, on average, the predicted mAs values were 10% lower and 8% higher than the values determined by AEC in the overexposure (REX > 355.6) and underexposure (REX < 355.6) groups, respectively. Moreover, the predicted mAs values were further reduced in all patients when lowering the target REX values. We concluded that the ML approach was feasible for building an artificial intelligence model for predicting appropriate mAs with target exposure indicator for chest digital radiography.In digital radiography, image quality is synergistically affected by anatomy-specific examinations, exposure factors, body parameters, detector types, and vendors/systems. However, estimating appropriate exposure factors before radiography with optimized image quality without overexposure or underexposure to patients is difficult. Thus, there is an unmet need to establish a model to predict appropriate mAs for optimizing image quality before radiography. This study aimed to establish a machine learning (ML) model for predicting an appropriate current-time product (mAs) using the target exposure indicator in chest digital radiography. An anthropomorphic chest phantom was used to establish a target exposure indicator which was used to define overexposure and underexposure in the human study. This study enrolled 1,000 (M/F = 915/85) subjects who underwent regular chest radiography. The chest thickness, height, weight, body mass index, mAs, and concomitant reached exposure (REX) were recorded. To construct the prediction model, the dataset was randomly separated into training (80%) and testing (20%) sets by matching their demographic characteristics. Five ML models were trained using the training set with 10-fold cross validation, and the model performance was evaluated using the testing set with correlation coefficients, root-mean-square error, and mean average error. The phantom study showed that the average REX was 355.6 which served as the target exposure indicator. In human study, the comparisons showed that the artificial neural network (ANN) model was the most suitable for predicting both REX and mAs values. The results demonstrated that, on average, the predicted mAs values were 10% lower and 8% higher than the values determined by AEC in the overexposure (REX > 355.6) and underexposure (REX < 355.6) groups, respectively. Moreover, the predicted mAs values were further reduced in all patients when lowering the target REX values. We concluded that the ML approach was feasible for building an artificial intelligence model for predicting appropriate mAs with target exposure indicator for chest digital radiography. |
ArticleNumber | 11942 |
Author | Lin, Jia-Ru Liang, Yu-Syuan Li, Jyun-Jie Chou, Ming-Chung Chen, Tai-Yuan |
Author_xml | – sequence: 1 givenname: Jia-Ru surname: Lin fullname: Lin, Jia-Ru organization: Department of Radiology, Kaohsiung Armed Force General Hospital – sequence: 2 givenname: Tai-Yuan surname: Chen fullname: Chen, Tai-Yuan organization: Department of Radiology, Chi Mei Medical Center, Graduate Institute of Medical Sciences, Chang Jung Christian University – sequence: 3 givenname: Yu-Syuan surname: Liang fullname: Liang, Yu-Syuan organization: Department of Radiation Oncology, E-DA Hospital – sequence: 4 givenname: Jyun-Jie surname: Li fullname: Li, Jyun-Jie organization: Department of Radiology, Kaohsiung Armed Force General Hospital – sequence: 5 givenname: Ming-Chung surname: Chou fullname: Chou, Ming-Chung email: mcchou@kmu.edu.tw organization: Department of Medical Imaging and Radiological Sciences, Kaohsiung Medical University, Department of Medical Research, Kaohsiung Medical University Hospital, Biomedical Artificial Intelligence Academy, Kaohsiung Medical University |
BackLink | https://www.ncbi.nlm.nih.gov/pubmed/40200108$$D View this record in MEDLINE/PubMed |
BookMark | eNp9kktv1DAUhSNUREvpH2CBIrFhE7h-JLFXaFTxqFSJDawtj32T8ShjB9tDmRV_HU9TSssCb2zZ3zn36vg-r0588FhVLwm8JcDEu8RJK0UDtG1kJ3nfHJ5UZxR421BG6cmD82l1kdIWymqp5EQ-q045UAAC4qz6tfK1jtkNzjg91c5nnCY3ojdY74LFqR5CrOeI1pns_Fjrws9zDHN0Ohdmleoblzd11nHEXOPPOaR9xOJUFDoX8dHAbDDl2rrR5VIlauvCGPW8Obyong56Snhxt59X3z5--Hr5ubn-8unqcnXdGC55btZykGgZBSNlJ0BqXGuEjpYIkIAtz8OgkRlmOzAdsXxAobmFdg2mR67ZeXW1-Nqgt6o0v9PxoIJ26vYixFEdYzATKiYN6aBFZNxwoa3sW9OW3Di2PYhBFK_3i9e8X-_QGvQ56umR6eMX7zZqDD8UIbIXoufF4c2dQwzf9yUatXPJlOS1x7BPihEhQDApjujrf9Bt2EdfslqoFjjpCvXqYUv3vfz56ALQBTAxpBRxuEcIqONAqWWgVBkodTtQ6lBEbBGlAvsR49_a_1H9BkBe0M4 |
Cites_doi | 10.1007/s00247-004-1274-9 10.1016/j.ejrad.2009.05.060 10.1007/s00247-004-1272-y 10.1259/bjr.75.889.750038 10.1007/s00247-004-1271-z 10.1007/s00247-004-1273-x 10.1007/s003300100851 10.3390/su14020635 10.1016/j.jacr.2007.02.002 10.1002/jmrs.425 10.1007/s41066-017-0049-2 10.1016/j.radi.2021.08.009 10.3390/s23167169 10.1097/01.HP.0000326338.14198.a2 10.1118/1.1606450 10.1109/TNN.2006.882371 10.1088/0031-9155/54/15/002 10.1016/j.radi.2018.09.001 10.1088/0031-9155/61/21/N551 10.1207/s15516709cog1402_1 10.1007/s00247-010-1954-6 10.1007/978-3-319-70178-3_2 10.1002/jmrs.66 10.1093/rpd/nch548 10.1007/s00247-012-2555-3 10.1093/rpd/ncm493 10.1016/S0169-7439(97)00061-0 |
ContentType | Journal Article |
Copyright | The Author(s) 2025 2025. The Author(s). Copyright Nature Publishing Group 2025 The Author(s) 2025 2025 |
Copyright_xml | – notice: The Author(s) 2025 – notice: 2025. The Author(s). – notice: Copyright Nature Publishing Group 2025 – notice: The Author(s) 2025 2025 |
DBID | C6C AAYXX CITATION CGR CUY CVF ECM EIF NPM 3V. 7X7 7XB 88A 88E 88I 8FE 8FH 8FI 8FJ 8FK ABUWG AEUYN AFKRA AZQEC BBNVY BENPR BHPHI CCPQU DWQXO FYUFA GHDGH GNUQQ HCIFZ K9. LK8 M0S M1P M2P M7P PHGZM PHGZT PIMPY PJZUB PKEHL PPXIY PQEST PQGLB PQQKQ PQUKI Q9U 7X8 5PM DOA |
DOI | 10.1038/s41598-025-96947-y |
DatabaseName | Springer Nature OA Free Journals CrossRef Medline MEDLINE MEDLINE (Ovid) MEDLINE MEDLINE PubMed ProQuest Central (Corporate) Health & Medical Collection ProQuest Central (purchase pre-March 2016) Biology Database (Alumni Edition) Medical Database (Alumni Edition) Science Database (Alumni Edition) ProQuest SciTech Collection ProQuest Natural Science Journals Hospital Premium Collection Hospital Premium Collection (Alumni Edition) ProQuest Central (Alumni) (purchase pre-March 2016) ProQuest Central (Alumni) ProQuest One Sustainability ProQuest Central ProQuest Central Essentials Biological Science Collection ProQuest Central Natural Science Collection ProQuest One ProQuest Central Health Research Premium Collection Health Research Premium Collection (Alumni) ProQuest Central Student ProQuest SciTech Premium Collection ProQuest Health & Medical Complete (Alumni) Biological Sciences ProQuest Health & Medical Collection Proquest Medical Database Science Database Biological Science Database ProQuest Central Premium ProQuest One Academic (New) ProQuest Publicly Available Content Database ProQuest Health & Medical Research Collection ProQuest One Academic Middle East (New) ProQuest One Health & Nursing ProQuest One Academic Eastern Edition (DO NOT USE) ProQuest One Applied & Life Sciences ProQuest One Academic ProQuest One Academic UKI Edition ProQuest Central Basic MEDLINE - Academic PubMed Central (Full Participant titles) DOAJ Directory of Open Access Journals |
DatabaseTitle | CrossRef MEDLINE Medline Complete MEDLINE with Full Text PubMed MEDLINE (Ovid) Publicly Available Content Database ProQuest Central Student ProQuest One Academic Middle East (New) ProQuest Central Essentials ProQuest Health & Medical Complete (Alumni) ProQuest Central (Alumni Edition) SciTech Premium Collection ProQuest One Community College ProQuest One Health & Nursing ProQuest Natural Science Collection ProQuest Biology Journals (Alumni Edition) ProQuest Central ProQuest One Applied & Life Sciences ProQuest One Sustainability ProQuest Health & Medical Research Collection Health Research Premium Collection Health and Medicine Complete (Alumni Edition) Natural Science Collection ProQuest Central Korea Health & Medical Research Collection Biological Science Collection ProQuest Central (New) ProQuest Medical Library (Alumni) ProQuest Science Journals (Alumni Edition) ProQuest Biological Science Collection ProQuest Central Basic ProQuest Science Journals ProQuest One Academic Eastern Edition ProQuest Hospital Collection Health Research Premium Collection (Alumni) Biological Science Database ProQuest SciTech Collection ProQuest Hospital Collection (Alumni) ProQuest Health & Medical Complete ProQuest Medical Library ProQuest One Academic UKI Edition ProQuest One Academic ProQuest One Academic (New) ProQuest Central (Alumni) MEDLINE - Academic |
DatabaseTitleList | Publicly Available Content Database CrossRef MEDLINE MEDLINE - Academic |
Database_xml | – sequence: 1 dbid: C6C name: Springer Nature OA Free Journals url: http://www.springeropen.com/ sourceTypes: Publisher – sequence: 2 dbid: DOA name: DOAJ Directory of Open Access Journals url: https://www.doaj.org/ sourceTypes: Open Website – sequence: 3 dbid: NPM name: PubMed url: https://proxy.k.utb.cz/login?url=http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?db=PubMed sourceTypes: Index Database – sequence: 4 dbid: EIF name: MEDLINE url: https://proxy.k.utb.cz/login?url=https://www.webofscience.com/wos/medline/basic-search sourceTypes: Index Database – sequence: 5 dbid: BENPR name: ProQuest Central url: https://www.proquest.com/central sourceTypes: Aggregation Database |
DeliveryMethod | fulltext_linktorsrc |
Discipline | Biology |
EISSN | 2045-2322 |
EndPage | 10 |
ExternalDocumentID | oai_doaj_org_article_39c1605ee34c48ad975c54194e5708f8 PMC11978874 40200108 10_1038_s41598_025_96947_y |
Genre | Journal Article |
GrantInformation_xml | – fundername: Kaohsiung Armed Forces General Hospital grantid: 107-26 funderid: http://dx.doi.org/10.13039/501100015045 – fundername: Ministry of Science and Technology, Taiwan grantid: MOST110-2314-B-037-077-MY3 funderid: http://dx.doi.org/10.13039/501100004663 – fundername: Kaohsiung Armed Forces General Hospital grantid: 107-26 – fundername: Ministry of Science and Technology, Taiwan grantid: MOST110-2314-B-037-077-MY3 |
GroupedDBID | 0R~ 4.4 53G 5VS 7X7 88E 88I 8FE 8FH 8FI 8FJ AAFWJ AAJSJ AAKDD AASML ABDBF ABUWG ACGFS ACUHS ADBBV ADRAZ AENEX AEUYN AFKRA AFPKN ALIPV ALMA_UNASSIGNED_HOLDINGS AOIJS AZQEC BAWUL BBNVY BCNDV BENPR BHPHI BPHCQ BVXVI C6C CCPQU DIK DWQXO EBD EBLON EBS ESX FYUFA GNUQQ GROUPED_DOAJ GX1 HCIFZ HH5 HMCUK HYE KQ8 LK8 M1P M2P M7P M~E NAO OK1 PHGZM PHGZT PIMPY PJZUB PPXIY PQGLB PQQKQ PROAC PSQYO RNT RNTTT RPM SNYQT UKHRP AAYXX CITATION CGR CUY CVF ECM EIF NPM 3V. 7XB 88A 8FK K9. M48 PKEHL PQEST PQUKI Q9U 7X8 5PM PUEGO |
ID | FETCH-LOGICAL-c494t-b9f9ed320c996809aebae062598e10db9fffae3c3d60c61d4fe8a4d05b0c7e4a3 |
IEDL.DBID | 7X7 |
ISSN | 2045-2322 |
IngestDate | Wed Aug 27 01:32:17 EDT 2025 Thu Aug 21 18:36:37 EDT 2025 Fri Jul 11 18:45:21 EDT 2025 Sat Aug 23 12:59:19 EDT 2025 Mon Jul 21 05:56:49 EDT 2025 Tue Jul 01 05:13:08 EDT 2025 Mon Jul 21 06:06:45 EDT 2025 |
IsDoiOpenAccess | true |
IsOpenAccess | true |
IsPeerReviewed | true |
IsScholarly | true |
Issue | 1 |
Keywords | Reached exposure Chest radiography mAs Machine learning |
Language | English |
License | 2025. The Author(s). Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. |
LinkModel | DirectLink |
MergedId | FETCHMERGED-LOGICAL-c494t-b9f9ed320c996809aebae062598e10db9fffae3c3d60c61d4fe8a4d05b0c7e4a3 |
Notes | ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 14 content type line 23 |
OpenAccessLink | https://www.proquest.com/docview/3188050416?pq-origsite=%requestingapplication% |
PMID | 40200108 |
PQID | 3188050416 |
PQPubID | 2041939 |
PageCount | 10 |
ParticipantIDs | doaj_primary_oai_doaj_org_article_39c1605ee34c48ad975c54194e5708f8 pubmedcentral_primary_oai_pubmedcentral_nih_gov_11978874 proquest_miscellaneous_3188083984 proquest_journals_3188050416 pubmed_primary_40200108 crossref_primary_10_1038_s41598_025_96947_y springer_journals_10_1038_s41598_025_96947_y |
ProviderPackageCode | CITATION AAYXX |
PublicationCentury | 2000 |
PublicationDate | 2025-04-08 |
PublicationDateYYYYMMDD | 2025-04-08 |
PublicationDate_xml | – month: 04 year: 2025 text: 2025-04-08 day: 08 |
PublicationDecade | 2020 |
PublicationPlace | London |
PublicationPlace_xml | – name: London – name: England |
PublicationTitle | Scientific reports |
PublicationTitleAbbrev | Sci Rep |
PublicationTitleAlternate | Sci Rep |
PublicationYear | 2025 |
Publisher | Nature Publishing Group UK Nature Publishing Group Nature Portfolio |
Publisher_xml | – name: Nature Publishing Group UK – name: Nature Publishing Group – name: Nature Portfolio |
References | W Ching (96947_CR4) 2014; 61 S Gatt (96947_CR5) 2022; 28 KN Jabri (96947_CR25) 2004; 34 ML Zhang (96947_CR1) 2013; 43 96947_CR7 JA Seibert (96947_CR22) 2011; 41 D Svozil (96947_CR28) 1997; 39 K Alzyoud (96947_CR3) 2019; 25 96947_CR6 M Arreola (96947_CR24) 2004; 34 H Geijer (96947_CR9) 2001; 11 MA Bredella (96947_CR34) 2017; 1043 96947_CR27 B Lanhede (96947_CR19) 2002; 75 NE Peacock (96947_CR20) 2020; 67 96947_CR29 JA Seibert (96947_CR17) 2008; 95 U Neitzel (96947_CR26) 2004; 34 IA Tsalafoutas (96947_CR21) 2008; 130 NW Marshall (96947_CR13) 2009; 54 R Schaetzing (96947_CR23) 2004; 34 VN Cooper (96947_CR8) 2003; 30 96947_CR30 P Doyle (96947_CR10) 2005; 114 O De Jesús (96947_CR31) 2007; 18 C Cortes (96947_CR33) 1995; 20 JL Elman (96947_CR32) 1990; 14 M Uffmann (96947_CR18) 2009; 72 96947_CR15 96947_CR14 MB Williams (96947_CR16) 2007; 4 CS Moore (96947_CR12) 2016; 61 EK Ofori (96947_CR2) 2016; 23 SC Kim (96947_CR11) 2015; 23 |
References_xml | – volume: 34 start-page: S227 year: 2004 ident: 96947_CR26 publication-title: Pediatr. Radiol. doi: 10.1007/s00247-004-1274-9 – volume: 72 start-page: 202 issue: 2 year: 2009 ident: 96947_CR18 publication-title: Eur. J. Radiol. doi: 10.1016/j.ejrad.2009.05.060 – volume: 34 start-page: S215 year: 2004 ident: 96947_CR25 publication-title: Pediatr. Radiol. doi: 10.1007/s00247-004-1272-y – volume: 75 start-page: 38 issue: 889 year: 2002 ident: 96947_CR19 publication-title: Brit J. Radiol. doi: 10.1259/bjr.75.889.750038 – volume: 34 start-page: S207 year: 2004 ident: 96947_CR23 publication-title: Pediatr. Radiol. doi: 10.1007/s00247-004-1271-z – volume: 34 start-page: S221 year: 2004 ident: 96947_CR24 publication-title: Pediatr. Radiol. doi: 10.1007/s00247-004-1273-x – volume: 11 start-page: 1704 issue: 9 year: 2001 ident: 96947_CR9 publication-title: Eur. Radiol. doi: 10.1007/s003300100851 – ident: 96947_CR14 – ident: 96947_CR29 – ident: 96947_CR30 doi: 10.3390/su14020635 – volume: 4 start-page: 371 issue: 6 year: 2007 ident: 96947_CR16 publication-title: J. Am. Coll. Radiol. doi: 10.1016/j.jacr.2007.02.002 – volume: 67 start-page: 362 issue: 4 year: 2020 ident: 96947_CR20 publication-title: J. Med. Radiat. Sci. doi: 10.1002/jmrs.425 – ident: 96947_CR27 doi: 10.1007/s41066-017-0049-2 – ident: 96947_CR7 – volume: 28 start-page: 107 issue: 1 year: 2022 ident: 96947_CR5 publication-title: Radiography (Lond.) doi: 10.1016/j.radi.2021.08.009 – ident: 96947_CR6 doi: 10.3390/s23167169 – volume: 95 start-page: 586 issue: 5 year: 2008 ident: 96947_CR17 publication-title: Health Phys. doi: 10.1097/01.HP.0000326338.14198.a2 – volume: 23 start-page: 150 year: 2016 ident: 96947_CR2 publication-title: J. Health Med. Nurs. – volume: 30 start-page: 2614 issue: 10 year: 2003 ident: 96947_CR8 publication-title: Med. Phys. doi: 10.1118/1.1606450 – volume: 18 start-page: 14 issue: 1 year: 2007 ident: 96947_CR31 publication-title: Ieee T Neural Networ doi: 10.1109/TNN.2006.882371 – volume: 54 start-page: 4645 issue: 15 year: 2009 ident: 96947_CR13 publication-title: Phys. Med. Biol. doi: 10.1088/0031-9155/54/15/002 – ident: 96947_CR15 – volume: 25 start-page: e11 issue: 1 year: 2019 ident: 96947_CR3 publication-title: Radiography (Lond.) doi: 10.1016/j.radi.2018.09.001 – volume: 61 start-page: N551 issue: 21 year: 2016 ident: 96947_CR12 publication-title: Phys. Med. Biol. doi: 10.1088/0031-9155/61/21/N551 – volume: 14 start-page: 179 year: 1990 ident: 96947_CR32 publication-title: Cogn. Sci. doi: 10.1207/s15516709cog1402_1 – volume: 41 start-page: 573 issue: 5 year: 2011 ident: 96947_CR22 publication-title: Pediatr. Radiol. doi: 10.1007/s00247-010-1954-6 – volume: 23 start-page: 321 issue: 3 year: 2015 ident: 96947_CR11 publication-title: J. X-Ray Sci. Technol. – volume: 1043 start-page: 9 year: 2017 ident: 96947_CR34 publication-title: Adv. Exp. Med. Biol. doi: 10.1007/978-3-319-70178-3_2 – volume: 61 start-page: 176 issue: 3 year: 2014 ident: 96947_CR4 publication-title: J. Med. Radiat. Sci. doi: 10.1002/jmrs.66 – volume: 114 start-page: 236 issue: 1–3 year: 2005 ident: 96947_CR10 publication-title: Radiat. Prot. Dosim doi: 10.1093/rpd/nch548 – volume: 43 start-page: 568 issue: 5 year: 2013 ident: 96947_CR1 publication-title: Pediatr. Radiol. doi: 10.1007/s00247-012-2555-3 – volume: 130 start-page: 162 issue: 2 year: 2008 ident: 96947_CR21 publication-title: Radiat. Prot. Dosimetry doi: 10.1093/rpd/ncm493 – volume: 20 start-page: 273 issue: 3 year: 1995 ident: 96947_CR33 publication-title: Mach. Learn. – volume: 39 start-page: 43 issue: 1 year: 1997 ident: 96947_CR28 publication-title: Chemometr Intell. Lab. doi: 10.1016/S0169-7439(97)00061-0 |
SSID | ssj0000529419 |
Score | 2.4444864 |
Snippet | In digital radiography, image quality is synergistically affected by anatomy-specific examinations, exposure factors, body parameters, detector types, and... Abstract In digital radiography, image quality is synergistically affected by anatomy-specific examinations, exposure factors, body parameters, detector types,... |
SourceID | doaj pubmedcentral proquest pubmed crossref springer |
SourceType | Open Website Open Access Repository Aggregation Database Index Database Publisher |
StartPage | 11942 |
SubjectTerms | 639/166/985 692/700/1421/1770 Adult Aged Artificial Intelligence Body mass index Chest Chest radiography Correlation coefficient Exposure Female Humanities and Social Sciences Humans Machine Learning Male mAs Middle Aged multidisciplinary Neural networks Phantoms, Imaging Prediction models Radiation Dosage Radiographic Image Enhancement - methods Radiography Radiography, Thoracic - methods Reached exposure Science Science (multidisciplinary) Thorax - diagnostic imaging |
SummonAdditionalLinks | – databaseName: DOAJ Directory of Open Access Journals dbid: DOA link: http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwrV1LbxMxELZQJSQuCCiPhYKMxA2sOmt71z4GRFVVghOVerP8hBzYREkqkVP_emfsTUh4iAvX9cjrnRnvzHjG3xDyxreGq5w588r1TAonmY88MtM6YTLPnRJ4G_nT5-78Ul5cqau9Vl9YE1bhgSvjToUJE3C5UxIySO2i6VVQEkLvpHquc7nmCzZvL5iqqN6tAaLxlgwX-nQFlgpvk7WKmc7Inm0OLFEB7P-Tl_l7seQvGdNiiM4ekPujB0mndeUPyZ00PCJ3a0_JzTG5mQ4Uv6oiQ9DZHuQmLW1vKLipdLHEBA2WPFMH9AgsDq8Dv5N-n64oHs7SWiNO04_FHE8RKSa3A4boZYLSZ4vG2VdsOkKXLs5G7OvH5PLs45cP52zsssCCNHLNvMkmRdHyAKGP5sYl7xLHsEinCY8wnLNLIojY8dBNosxJOxm58jz0STrxhBwN8yE9I9Q5J3R0Svneyxiij34S2i6FFODf4HlD3m45bhcVTMOWJLjQtsrHgnxskY_dNOQ9CmVHiUDY5QGohx3Vw_5LPRpyshWpHXfnygoEoVMcfNGGvN4Nw77CZIkb0vx6pAHvUcuGPK0asFsJxtwQx8Lk-kA3DpZ6ODLMvhXsbszawn8dJn23VaOf6_o7L57_D168IPda1H-sO9In5Gi9vE4vwaVa-1dl99wCFv0g9g priority: 102 providerName: Directory of Open Access Journals – databaseName: Springer Nature OA Free Journals dbid: C6C link: http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwlV1Lj9MwELaWRUhcEO8NLMhI3MDCie3EPpaK1QoJTqy0N8vPpQfSqu1K9MRfZ8ZJCoXlwDWeOI5nbM94Zr4h5LVvDFc5c-aV65gUTjIfeWSmccJknlslMBv50-f2_EJ-vFSXR6SZcmFK0H6BtCzb9BQd9m4DBw0mgzWKmdbIju1ukdsI3Y5SPW_n-3sV9FzJ2oz5MVzoG149OIMKVP9N-uXfYZJ_-ErLEXR2n9wbdUc6G0b7gByl_iG5M1ST3D0iP2Y9xT8ZMCHo4jewTVoK3lBQUOlqja4ZDHamDugRUhw-Bxon_TbbULyWpUN0OE3fV0u8P6To1g5onJcOSoUtGhdXWG6Erl1cjKjXj8nF2Ycv83M21ldgQRq5Zd5kk6JoeACjR3PjkneJo0GkU80jNOfskggitjy0dZQ5aScjV56HLkknnpDjftmnE0Kdc0JHp5TvvIwh-ujr0LQppAC7gucVeTPNuF0NMBq2uL-FtgN_LPDHFv7YXUXeI1P2lAiBXR4s11d2FAkrTKjBFktJyCC1i6ZTQQHnZVId11lX5HRiqR3X5cYKhJ9THLTQirzaN8OKQjeJ69PyeqQBvVHLijwdJGA_ErS2wYKFzvWBbBwM9bClX3wtqN3or4UdHTp9O4nRr3H9ey6e_R_5c3K3QUnH2CJ9So636-v0AtSmrX9Z1slP4dgX1Q priority: 102 providerName: Springer Nature |
Title | An artificial intelligence model for predicting an appropriate mAs with target exposure indicator for chest digital radiography |
URI | https://link.springer.com/article/10.1038/s41598-025-96947-y https://www.ncbi.nlm.nih.gov/pubmed/40200108 https://www.proquest.com/docview/3188050416 https://www.proquest.com/docview/3188083984 https://pubmed.ncbi.nlm.nih.gov/PMC11978874 https://doaj.org/article/39c1605ee34c48ad975c54194e5708f8 |
Volume | 15 |
hasFullText | 1 |
inHoldings | 1 |
isFullTextHit | |
isPrint | |
link | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwfV1Lj9MwELZgV0hcEG8CS2UkbhCtE9uJfULZalerSqwQsFJvkV9ZeiAtbVeiJ_46M47bpbxOkWLLcTwz9rz8DSGvbamZ7DqWW2nqXHAjcuuZz3VpuO5YV0mOt5HfX1Tnl2IyldPkcFultMrtnhg3aj936CM_5ggcJhnoD-8W33KsGoXR1VRC4zY5ROgyTOmqp_XOx4JRLFHodFeGcXW8gvMK75SVMteVFnW-2TuPImz_33TNP1Mmf4ubxuPo7D65l_RI2gyEf0Buhf4huTNUltw8Ij-aniJTDPgQdPYL8CaNxW8oKKt0scQwDSY-UwP9EV4cPgfaJ_3arCi6aOmQKU7D98UcfYkUQ9wODfU4QKy2Rf3sCkuP0KXxs4SA_Zhcnp1-Hp_nqdZC7oQW69zqTgfPS-bAAFJMm2BNYGgcqVAwD81dZwJ33FfMVYUXXVBGeCYtc3UQhj8hB_28D88INcZw5Y2UtrbCO2-9LVxZBRcc7BCWZeTNdsXbxQCp0cZQOFftQJ8W6NNG-rSbjJwgUXY9EQ47vpgvr9okXS3XrgC7LAQunFDG61o6CZQXQdZMdSojR1uStklGV-0NR2Xk1a4ZpAtDJqYP8-vUB3RIJTLydOCA3UzQ8gZrFgZXe7yxN9X9ln72JSJ4Y-wWdncY9O2WjW7m9e-1eP7_33hB7pbI2ZhXpI7IwXp5HV6CyrS2oygXI3LYNJNPE3ienF58-Ahvx9V4FN0QPwH39R5F |
linkProvider | ProQuest |
linkToHtml | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwtR3JbhMx1CqpEFwQO4ECRoITjOqM7Rn7gFAKrVLaRgi1Um-utyk5dJImqSAn_ohv5L1ZUsJ263VsvfHMW_z2R8hLl2omi4IlTto8EdyKxAUWEp1argtWZJJjNfLBMBsciY_H8niN_GhrYTCtspWJlaAOY48-8k2OjcMkA_3h3eQ8walRGF1tR2jUZLEXF1_BZJu93f0A-H2Vpjvbh-8HSTNVIPFCi3nidKFj4CnzoOorpm10NjI0A1TssQDLRWEj9zxkzGe9IIqorAhMOubzKCwHuNfIuuBgynTI-tb28NPnpVcH42aip5vqHMbV5gxuSKxiS2WiMy3yZLFyA1aDAv6m3f6ZpPlbpLa6AHduk1uN5kr7NandIWuxvEuu17MsF_fI935JkQzrjhR09EurT1qN26GgHtPJFANDmGpNLezHhubwOtB36Vl_RtEpTOvcdBq_TcbovaQYVPfoGqgAVPO9aBid4rATOrVh1PTcvk-OrgQPD0inHJfxEaHWWq6CldLlTgQfXHA9n2bRRw8yybEued3-cTOpm3iYKvjOlanxYwA_psKPWXTJFiJluRMbcFcPxtNT0_Cz4dr3wBKMkQsvlA06l14C5kWUOVOF6pKNFqWmkQozc0nDXfJiuQz8jEEaW8bxRbMHtFYluuRhTQHLk6CtD_YzAFcrtLFy1NWVcvSl6hmO0WK4TwDom5aMLs_173_x-P-f8ZzcGBwe7Jv93eHeE3IzRSrHrCa1QTrz6UV8Cgrb3D1ruISSk6tmzJ-NH1mk |
linkToPdf | http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwtR3JbtQw1CpFIC6ItQQKGAlOEI0T24l9QGigjFoKFQcqzc14S5kDmWFmKpgT_8XX8V6WKcN26zW2Xpy8xW9_hDx2uWayqljqpC1Twa1IXWAh1bnlumJVITlWI787KvaPxZuxHG-RH30tDKZV9jKxEdRh6tFHPuDYOEwy0B8GVZcW8X5v9GL2JcUJUhhp7cdptCRyGFdfwXxbPD_YA1w_yfPR6w-v9tNuwkDqhRbL1OlKx8Bz5kHtV0zb6GxkaBKomLEAy1VlI_c8FMwXWRBVVFYEJh3zZRSWA9wL5GLJZYY8Vo7LtX8HI2gi012dDuNqsIC7EuvZcpnqQosyXW3chc3IgL_puX-ma_4Ws22uwtE1crXTYemwJbrrZCvWN8ildqrl6ib5PqwpEmTbm4JOfmn6SZvBOxQUZTqbY4gIk66phf3Y2hxeB5ov_TxcUHQP0zZLncZvsyn6MSmG1z06CRoAzaQvGiYnOPaEzm2YdN23b5Hjc8HCbbJdT-t4h1BrLVfBSulKJ4IPLrjM50X00YN0ciwhT_s_bmZtOw_ThOG5Mi1-DODHNPgxq4S8RKSsd2Ir7ubBdH5iOs42XPsMbMIYufBC2aBL6SVgXkRZMlWphOz2KDWdfFiYM2pOyKP1MnA2hmtsHaen3R7QX5VIyE5LAeuToNUPljQAVxu0sXHUzZV68qnpHo5xY7hZAOiznozOzvXvf3H3_5_xkFwGdjRvD44O75ErORI5pjepXbK9nJ_G-6C5Ld2DhkUo-XjePPkTfsRcdA |
openUrl | ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=An+artificial+intelligence+model+for+predicting+an+appropriate+mAs+with+target+exposure+indicator+for+chest+digital+radiography&rft.jtitle=Scientific+reports&rft.date=2025-04-08&rft.pub=Nature+Publishing+Group&rft.eissn=2045-2322&rft.volume=15&rft.issue=1&rft.spage=11942&rft_id=info:doi/10.1038%2Fs41598-025-96947-y&rft.externalDBID=HAS_PDF_LINK |
thumbnail_l | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=2045-2322&client=summon |
thumbnail_m | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=2045-2322&client=summon |
thumbnail_s | http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=2045-2322&client=summon |